
/**
 * @file ops.h
 * TensorFlow raw_ops mappings
 */

#ifndef CPPFLOW2_RAW_OPS_H
#define CPPFLOW2_RAW_OPS_H

#include <cstdint>
#include <vector>
#include <limits>
#include <algorithm>

#include <tensorflow/c/eager/c_api.h>
#include <tensorflow/c/tf_datatype.h>
#include <tensorflow/c/tf_tensor.h>

#include "tensor.h"
#include "datatype.h"

namespace cppflow {



inline tensor abs(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Abs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor accumulate_n_v2(const std::vector<tensor>&inputs, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AccumulateNV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor accumulator_num_accumulated(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AccumulatorNumAccumulated", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor accumulator_take_gradient(const tensor& handle, const tensor& num_required, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AccumulatorTakeGradient", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_required.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor acos(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Acos", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor acosh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Acosh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor add(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Add", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor add_many_sparse_to_tensors_map(const tensor& sparse_indices, const tensor& sparse_values, const tensor& sparse_shape, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AddManySparseToTensorsMap", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor add_n(const std::vector<tensor>&inputs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AddN", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor add_sparse_to_tensors_map(const tensor& sparse_indices, const tensor& sparse_values, const tensor& sparse_shape, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AddSparseToTensorsMap", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor add_v2(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AddV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor adjust_contrast(const tensor& images, const tensor& contrast_factor, const tensor& min_value, const tensor& max_value) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AdjustContrast", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), contrast_factor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor adjust_contrastv2(const tensor& images, const tensor& contrast_factor) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AdjustContrastv2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), contrast_factor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor adjust_hue(const tensor& images, const tensor& delta) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AdjustHue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), delta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor adjust_saturation(const tensor& images, const tensor& scale) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AdjustSaturation", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scale.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor all(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "All", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor all_to_all(const tensor& input, const tensor& group_assignment, int64_t concat_dimension, int64_t split_dimension, int64_t split_count) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AllToAll", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), group_assignment.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "concat_dimension", concat_dimension);
    TFE_OpSetAttrInt(op.get(), "split_dimension", split_dimension);
    TFE_OpSetAttrInt(op.get(), "split_count", split_count);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor angle(const tensor& input, datatype Tout=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Angle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor anonymous_iterator(const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AnonymousIterator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor any(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Any", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_ada_max(const tensor& var, const tensor& m, const tensor& v, const tensor& beta1_power, const tensor& lr, const tensor& beta1, const tensor& beta2, const tensor& epsilon, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdaMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), m.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta1_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_adadelta(const tensor& var, const tensor& accum, const tensor& accum_update, const tensor& lr, const tensor& rho, const tensor& epsilon, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdadelta", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum_update.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_adagrad(const tensor& var, const tensor& accum, const tensor& lr, const tensor& grad, bool use_locking=false, bool update_slots=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdagrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "update_slots", (unsigned char)update_slots);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_adagrad_d_a(const tensor& var, const tensor& gradient_accumulator, const tensor& gradient_squared_accumulator, const tensor& grad, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& global_step, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdagradDA", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradient_accumulator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradient_squared_accumulator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), global_step.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_adagrad_v2(const tensor& var, const tensor& accum, const tensor& lr, const tensor& epsilon, const tensor& grad, bool use_locking=false, bool update_slots=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdagradV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "update_slots", (unsigned char)update_slots);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_adam(const tensor& var, const tensor& m, const tensor& v, const tensor& beta1_power, const tensor& beta2_power, const tensor& lr, const tensor& beta1, const tensor& beta2, const tensor& epsilon, const tensor& grad, bool use_locking=false, bool use_nesterov=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAdam", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), m.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta1_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta2_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "use_nesterov", (unsigned char)use_nesterov);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_add_sign(const tensor& var, const tensor& m, const tensor& lr, const tensor& alpha, const tensor& sign_decay, const tensor& beta, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyAddSign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), m.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sign_decay.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_centered_r_m_s_prop(const tensor& var, const tensor& mg, const tensor& ms, const tensor& mom, const tensor& lr, const tensor& rho, const tensor& momentum, const tensor& epsilon, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyCenteredRMSProp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mg.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ms.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mom.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_ftrl(const tensor& var, const tensor& accum, const tensor& linear, const tensor& grad, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& lr_power, bool use_locking=false, bool multiply_linear_by_lr=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyFtrl", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), linear.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "multiply_linear_by_lr", (unsigned char)multiply_linear_by_lr);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_ftrl_v2(const tensor& var, const tensor& accum, const tensor& linear, const tensor& grad, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& l2_shrinkage, const tensor& lr_power, bool use_locking=false, bool multiply_linear_by_lr=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyFtrlV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), linear.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2_shrinkage.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "multiply_linear_by_lr", (unsigned char)multiply_linear_by_lr);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_gradient_descent(const tensor& var, const tensor& alpha, const tensor& delta, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyGradientDescent", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), delta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_momentum(const tensor& var, const tensor& accum, const tensor& lr, const tensor& grad, const tensor& momentum, bool use_locking=false, bool use_nesterov=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyMomentum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "use_nesterov", (unsigned char)use_nesterov);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_power_sign(const tensor& var, const tensor& m, const tensor& lr, const tensor& logbase, const tensor& sign_decay, const tensor& beta, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyPowerSign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), m.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), logbase.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sign_decay.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_proximal_adagrad(const tensor& var, const tensor& accum, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyProximalAdagrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_proximal_gradient_descent(const tensor& var, const tensor& alpha, const tensor& l1, const tensor& l2, const tensor& delta, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyProximalGradientDescent", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), delta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor apply_r_m_s_prop(const tensor& var, const tensor& ms, const tensor& mom, const tensor& lr, const tensor& rho, const tensor& momentum, const tensor& epsilon, const tensor& grad, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApplyRMSProp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ms.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mom.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor approximate_equal(const tensor& x, const tensor& y, float tolerance=1.0000e-05) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ApproximateEqual", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "tolerance", tolerance);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor arg_max(const tensor& input, const tensor& dimension, datatype Tidx=static_cast<datatype>(3), datatype output_type=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ArgMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dimension.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "output_type", output_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor arg_min(const tensor& input, const tensor& dimension, datatype Tidx=static_cast<datatype>(3), datatype output_type=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ArgMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dimension.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "output_type", output_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor as_string(const tensor& input, int64_t precision=-1, bool scientific=false, bool shortest=false, int64_t width=-1, const std::string& fill="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AsString", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "precision", precision);
    TFE_OpSetAttrBool(op.get(), "scientific", (unsigned char)scientific);
    TFE_OpSetAttrBool(op.get(), "shortest", (unsigned char)shortest);
    TFE_OpSetAttrInt(op.get(), "width", width);
    TFE_OpSetAttrString(op.get(), "fill", (void*) fill.c_str(), fill.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor asin(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Asin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor asinh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Asinh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor assert_cardinality_dataset(const tensor& input_dataset, const tensor& cardinality, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AssertCardinalityDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), cardinality.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor assert_next_dataset(const tensor& input_dataset, const tensor& transformations, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AssertNextDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), transformations.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor assign(const tensor& ref, const tensor& value, bool validate_shape=true, bool use_locking=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Assign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "validate_shape", (unsigned char)validate_shape);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor assign_add(const tensor& ref, const tensor& value, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AssignAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor assign_sub(const tensor& ref, const tensor& value, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AssignSub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor atan(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Atan", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor atan2(const tensor& y, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Atan2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor atanh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Atanh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor audio_spectrogram(const tensor& input, int64_t window_size, int64_t stride, bool magnitude_squared=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AudioSpectrogram", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "window_size", window_size);
    TFE_OpSetAttrInt(op.get(), "stride", stride);
    TFE_OpSetAttrBool(op.get(), "magnitude_squared", (unsigned char)magnitude_squared);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor audio_summary(const tensor& tag, const tensor& input_tensor, float sample_rate, int64_t max_outputs=3) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AudioSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "sample_rate", sample_rate);
    TFE_OpSetAttrInt(op.get(), "max_outputs", max_outputs);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor audio_summary_v2(const tensor& tag, const tensor& input_tensor, const tensor& sample_rate, int64_t max_outputs=3) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AudioSummaryV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sample_rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "max_outputs", max_outputs);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor auto_shard_dataset(const tensor& input_dataset, const tensor& num_workers, const tensor& index, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, int64_t auto_shard_policy=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AutoShardDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_workers.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "auto_shard_policy", auto_shard_policy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor avg_pool(const tensor& value, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AvgPool", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor avg_pool3_d(const tensor& input, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AvgPool3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor avg_pool3_d_grad(const tensor& orig_input_shape, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AvgPool3DGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor avg_pool_grad(const tensor& orig_input_shape, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "AvgPoolGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor banded_triangular_solve(const tensor& matrix, const tensor& rhs, bool lower=true, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BandedTriangularSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "lower", (unsigned char)lower);
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor barrier(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Barrier", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor barrier_incomplete_size(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BarrierIncompleteSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor barrier_ready_size(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BarrierReadySize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_cholesky(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchCholesky", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_cholesky_grad(const tensor& l, const tensor& grad) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchCholeskyGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), l.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_dataset(const tensor& input_dataset, const tensor& batch_size, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_dataset_v2(const tensor& input_dataset, const tensor& batch_size, const tensor& drop_remainder, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool parallel_copy=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), drop_remainder.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "parallel_copy", (unsigned char)parallel_copy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_f_f_t(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchFFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_f_f_t2_d(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchFFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_f_f_t3_d(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchFFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_i_f_f_t(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchIFFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_i_f_f_t2_d(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchIFFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_i_f_f_t3_d(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchIFFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_mat_mul(const tensor& x, const tensor& y, bool adj_x=false, bool adj_y=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adj_x", (unsigned char)adj_x);
    TFE_OpSetAttrBool(op.get(), "adj_y", (unsigned char)adj_y);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_mat_mul_v2(const tensor& x, const tensor& y, bool adj_x=false, bool adj_y=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatMulV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adj_x", (unsigned char)adj_x);
    TFE_OpSetAttrBool(op.get(), "adj_y", (unsigned char)adj_y);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_band_part(const tensor& input, const tensor& num_lower, const tensor& num_upper) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixBandPart", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_lower.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_upper.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_determinant(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixDeterminant", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_diag(const tensor& diagonal) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixDiag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_diag_part(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixDiagPart", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_inverse(const tensor& input, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixInverse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_set_diag(const tensor& input, const tensor& diagonal) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixSetDiag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_solve(const tensor& matrix, const tensor& rhs, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_solve_ls(const tensor& matrix, const tensor& rhs, const tensor& l2_regularizer, bool fast=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixSolveLs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2_regularizer.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "fast", (unsigned char)fast);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_matrix_triangular_solve(const tensor& matrix, const tensor& rhs, bool lower=true, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchMatrixTriangularSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "lower", (unsigned char)lower);
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_norm_with_global_normalization(const tensor& t, const tensor& m, const tensor& v, const tensor& beta, const tensor& gamma, float variance_epsilon, bool scale_after_normalization) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchNormWithGlobalNormalization", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), t.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), m.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gamma.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "variance_epsilon", variance_epsilon);
    TFE_OpSetAttrBool(op.get(), "scale_after_normalization", (unsigned char)scale_after_normalization);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_self_adjoint_eig(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchSelfAdjointEig", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_to_space(const tensor& input, const tensor& crops, int64_t block_size, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchToSpace", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), crops.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "block_size", block_size);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor batch_to_space_n_d(const tensor& input, const tensor& block_shape, const tensor& crops, datatype Tblock_shape=static_cast<datatype>(3), datatype Tcrops=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BatchToSpaceND", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), block_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), crops.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tblock_shape", Tblock_shape);
    TFE_OpSetAttrType(op.get(), "Tcrops", Tcrops);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_i0(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselI0", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_i0e(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselI0e", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_i1(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselI1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_i1e(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselI1e", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_j0(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselJ0", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_j1(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselJ1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_k0(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselK0", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_k0e(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselK0e", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_k1(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselK1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_k1e(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselK1e", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_y0(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselY0", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bessel_y1(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BesselY1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor betainc(const tensor& a, const tensor& b, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Betainc", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bias_add(const tensor& value, const tensor& bias, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BiasAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), bias.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bias_add_grad(const tensor& out_backprop, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BiasAddGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bias_add_v1(const tensor& value, const tensor& bias) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BiasAddV1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), bias.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bincount(const tensor& arr, const tensor& size, const tensor& weights) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Bincount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), arr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), weights.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bitcast(const tensor& input, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Bitcast", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bitwise_and(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BitwiseAnd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bitwise_or(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BitwiseOr", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bitwise_xor(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BitwiseXor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_aggregate_stats(const tensor& node_ids, const tensor& gradients, const tensor& hessians, const tensor& feature, int64_t max_splits, int64_t num_buckets) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesAggregateStats", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), node_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), hessians.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), feature.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "max_splits", max_splits);
    TFE_OpSetAttrInt(op.get(), "num_buckets", num_buckets);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_bucketize(const std::vector<tensor>&float_values, const std::vector<tensor>&bucket_boundaries) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesBucketize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> float_values_handles; float_values_handles.reserve(float_values.size());
    std::transform(float_values.begin(), float_values.end(), std::back_inserter(float_values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), float_values_handles.data(), float_values.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> bucket_boundaries_handles; bucket_boundaries_handles.reserve(bucket_boundaries.size());
    std::transform(bucket_boundaries.begin(), bucket_boundaries.end(), std::back_inserter(bucket_boundaries_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), bucket_boundaries_handles.data(), bucket_boundaries.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_features", float_values.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_center_bias(const tensor& tree_ensemble_handle, const tensor& mean_gradients, const tensor& mean_hessians, const tensor& l1, const tensor& l2) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesCenterBias", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tree_ensemble_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mean_gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mean_hessians.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_ensemble_resource_handle_op(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesEnsembleResourceHandleOp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_example_debug_outputs(const tensor& tree_ensemble_handle, const std::vector<tensor>&bucketized_features, int64_t logits_dimension) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesExampleDebugOutputs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tree_ensemble_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> bucketized_features_handles; bucketized_features_handles.reserve(bucketized_features.size());
    std::transform(bucketized_features.begin(), bucketized_features.end(), std::back_inserter(bucketized_features_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), bucketized_features_handles.data(), bucketized_features.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_bucketized_features", bucketized_features.size());
    TFE_OpSetAttrInt(op.get(), "logits_dimension", logits_dimension);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_flush_quantile_summaries(const tensor& quantile_stream_resource_handle, int64_t num_features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesFlushQuantileSummaries", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), quantile_stream_resource_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_features", num_features);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_make_quantile_summaries(const std::vector<tensor>&float_values, const tensor& example_weights, const tensor& epsilon) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesMakeQuantileSummaries", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> float_values_handles; float_values_handles.reserve(float_values.size());
    std::transform(float_values.begin(), float_values.end(), std::back_inserter(float_values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), float_values_handles.data(), float_values.size(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), example_weights.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_features", float_values.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_make_stats_summary(const tensor& node_ids, const tensor& gradients, const tensor& hessians, const std::vector<tensor>&bucketized_features_list, int64_t max_splits, int64_t num_buckets) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesMakeStatsSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), node_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), hessians.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> bucketized_features_list_handles; bucketized_features_list_handles.reserve(bucketized_features_list.size());
    std::transform(bucketized_features_list.begin(), bucketized_features_list.end(), std::back_inserter(bucketized_features_list_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), bucketized_features_list_handles.data(), bucketized_features_list.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "max_splits", max_splits);
    TFE_OpSetAttrInt(op.get(), "num_buckets", num_buckets);
    TFE_OpSetAttrInt(op.get(), "num_features", bucketized_features_list.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_predict(const tensor& tree_ensemble_handle, const std::vector<tensor>&bucketized_features, int64_t logits_dimension) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesPredict", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tree_ensemble_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> bucketized_features_handles; bucketized_features_handles.reserve(bucketized_features.size());
    std::transform(bucketized_features.begin(), bucketized_features.end(), std::back_inserter(bucketized_features_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), bucketized_features_handles.data(), bucketized_features.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_bucketized_features", bucketized_features.size());
    TFE_OpSetAttrInt(op.get(), "logits_dimension", logits_dimension);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_quantile_stream_resource_get_bucket_boundaries(const tensor& quantile_stream_resource_handle, int64_t num_features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesQuantileStreamResourceGetBucketBoundaries", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), quantile_stream_resource_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_features", num_features);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor boosted_trees_quantile_stream_resource_handle_op(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BoostedTreesQuantileStreamResourceHandleOp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor broadcast_args(const tensor& s0, const tensor& s1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BroadcastArgs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), s0.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), s1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor broadcast_to(const tensor& input, const tensor& shape, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BroadcastTo", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bucketize(const tensor& input, const std::vector<float>& boundaries) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Bucketize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloatList(op.get(), "boundaries", boundaries.data(), boundaries.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor bytes_produced_stats_dataset(const tensor& input_dataset, const tensor& tag, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "BytesProducedStatsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor c_s_r_sparse_matrix_to_dense(const tensor& sparse_input, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CSRSparseMatrixToDense", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor c_s_v_dataset(const tensor& filenames, const tensor& compression_type, const tensor& buffer_size, const tensor& header, const tensor& field_delim, const tensor& use_quote_delim, const tensor& na_value, const tensor& select_cols, const std::vector<tensor>&record_defaults, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CSVDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), compression_type.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), header.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), field_delim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), use_quote_delim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), na_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), select_cols.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> record_defaults_handles; record_defaults_handles.reserve(record_defaults.size());
    std::transform(record_defaults.begin(), record_defaults.end(), std::back_inserter(record_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), record_defaults_handles.data(), record_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cache_dataset(const tensor& input_dataset, const tensor& filename, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CacheDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filename.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cache_dataset_v2(const tensor& input_dataset, const tensor& filename, const tensor& cache, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CacheDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filename.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), cache.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cast(const tensor& x, datatype SrcT, datatype DstT, bool Truncate=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cast", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "SrcT", SrcT);
    TFE_OpSetAttrType(op.get(), "DstT", DstT);
    TFE_OpSetAttrBool(op.get(), "Truncate", (unsigned char)Truncate);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ceil(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Ceil", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor check_numerics(const tensor& input_tensor, const std::string& message) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CheckNumerics", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "message", (void*) message.c_str(), message.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor check_numerics_v2(const tensor& input_tensor, const std::string& message) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CheckNumericsV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "message", (void*) message.c_str(), message.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cholesky(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cholesky", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cholesky_grad(const tensor& l, const tensor& grad) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CholeskyGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), l.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor choose_fastest_dataset(const std::vector<tensor>&input_datasets, int64_t num_experiments, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ChooseFastestDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_datasets_handles; input_datasets_handles.reserve(input_datasets.size());
    std::transform(input_datasets.begin(), input_datasets.end(), std::back_inserter(input_datasets_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_datasets_handles.data(), input_datasets.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", input_datasets.size());
    TFE_OpSetAttrInt(op.get(), "num_experiments", num_experiments);
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor clip_by_value(const tensor& t, const tensor& clip_value_min, const tensor& clip_value_max) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ClipByValue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), t.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), clip_value_min.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), clip_value_max.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor collective_bcast_recv(int64_t group_size, int64_t group_key, int64_t instance_key, const std::vector<int64_t>& shape, const std::string& communication_hint="auto", float timeout_seconds=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CollectiveBcastRecv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "group_size", group_size);
    TFE_OpSetAttrInt(op.get(), "group_key", group_key);
    TFE_OpSetAttrInt(op.get(), "instance_key", instance_key);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "communication_hint", (void*) communication_hint.c_str(), communication_hint.size());
    TFE_OpSetAttrFloat(op.get(), "timeout_seconds", timeout_seconds);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor collective_bcast_send(const tensor& input, int64_t group_size, int64_t group_key, int64_t instance_key, const std::vector<int64_t>& shape, const std::string& communication_hint="auto", float timeout_seconds=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CollectiveBcastSend", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "group_size", group_size);
    TFE_OpSetAttrInt(op.get(), "group_key", group_key);
    TFE_OpSetAttrInt(op.get(), "instance_key", instance_key);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "communication_hint", (void*) communication_hint.c_str(), communication_hint.size());
    TFE_OpSetAttrFloat(op.get(), "timeout_seconds", timeout_seconds);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor collective_gather(const tensor& input, int64_t group_size, int64_t group_key, int64_t instance_key, const std::vector<int64_t>& shape, const std::string& communication_hint="auto", float timeout_seconds=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CollectiveGather", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "group_size", group_size);
    TFE_OpSetAttrInt(op.get(), "group_key", group_key);
    TFE_OpSetAttrInt(op.get(), "instance_key", instance_key);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "communication_hint", (void*) communication_hint.c_str(), communication_hint.size());
    TFE_OpSetAttrFloat(op.get(), "timeout_seconds", timeout_seconds);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor collective_permute(const tensor& input, const tensor& source_target_pairs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CollectivePermute", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), source_target_pairs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor collective_reduce(const tensor& input, int64_t group_size, int64_t group_key, int64_t instance_key, const std::string& merge_op, const std::string& final_op, const std::vector<int64_t>& subdiv_offsets, const std::vector<int64_t>& wait_for, const std::string& communication_hint="auto", float timeout_seconds=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CollectiveReduce", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "group_size", group_size);
    TFE_OpSetAttrInt(op.get(), "group_key", group_key);
    TFE_OpSetAttrInt(op.get(), "instance_key", instance_key);
    TFE_OpSetAttrString(op.get(), "merge_op", (void*) merge_op.c_str(), merge_op.size());
    TFE_OpSetAttrString(op.get(), "final_op", (void*) final_op.c_str(), final_op.size());
    TFE_OpSetAttrIntList(op.get(), "subdiv_offsets", subdiv_offsets.data(), subdiv_offsets.size());
    TFE_OpSetAttrIntList(op.get(), "wait_for", wait_for.data(), wait_for.size());
    TFE_OpSetAttrString(op.get(), "communication_hint", (void*) communication_hint.c_str(), communication_hint.size());
    TFE_OpSetAttrFloat(op.get(), "timeout_seconds", timeout_seconds);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor compare_and_bitpack(const tensor& input, const tensor& threshold) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CompareAndBitpack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor complex(const tensor& real, const tensor& imag, datatype Tout=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Complex", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), real.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), imag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor complex_abs(const tensor& x, datatype Tout=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ComplexAbs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor compress_element(const std::vector<tensor>&components, const std::vector<datatype>& input_types) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CompressElement", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> components_handles; components_handles.reserve(components.size());
    std::transform(components.begin(), components.end(), std::back_inserter(components_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), components_handles.data(), components.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "input_types", reinterpret_cast<const enum TF_DataType *>(input_types.data()), input_types.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor concat(const tensor& concat_dim, const std::vector<tensor>&values) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Concat", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), concat_dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> values_handles; values_handles.reserve(values.size());
    std::transform(values.begin(), values.end(), std::back_inserter(values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), values_handles.data(), values.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", values.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor concat_offset(const tensor& concat_dim, const std::vector<tensor>&shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConcatOffset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), concat_dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> shape_handles; shape_handles.reserve(shape.size());
    std::transform(shape.begin(), shape.end(), std::back_inserter(shape_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), shape_handles.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", shape.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor concat_v2(const std::vector<tensor>&values, const tensor& axis, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConcatV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> values_handles; values_handles.reserve(values.size());
    std::transform(values.begin(), values.end(), std::back_inserter(values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), values_handles.data(), values.size(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", values.size());
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor concatenate_dataset(const tensor& input_dataset, const tensor& another_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConcatenateDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), another_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conditional_accumulator(datatype dtype, const std::vector<int64_t>& shape, const std::string& container="", const std::string& shared_name="", const std::string& reduction_type="MEAN") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConditionalAccumulator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "reduction_type", (void*) reduction_type.c_str(), reduction_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor configure_distributed_t_p_u(const std::string& embedding_config="", const std::string& tpu_embedding_config="", bool is_global_init=false, bool enable_whole_mesh_compilations=false, bool compilation_failure_closes_chips=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConfigureDistributedTPU", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "embedding_config", (void*) embedding_config.c_str(), embedding_config.size());
    TFE_OpSetAttrString(op.get(), "tpu_embedding_config", (void*) tpu_embedding_config.c_str(), tpu_embedding_config.size());
    TFE_OpSetAttrBool(op.get(), "is_global_init", (unsigned char)is_global_init);
    TFE_OpSetAttrBool(op.get(), "enable_whole_mesh_compilations", (unsigned char)enable_whole_mesh_compilations);
    TFE_OpSetAttrBool(op.get(), "compilation_failure_closes_chips", (unsigned char)compilation_failure_closes_chips);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conj(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conj", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conjugate_transpose(const tensor& x, const tensor& perm, datatype Tperm=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ConjugateTranspose", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), perm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tperm", Tperm);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor const_tensor(const tensor& value, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Const", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    TFE_OpSetAttrTensor(op.get(), "value", value.get_tensor().get(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv2_d(const tensor& input, const tensor& filter, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, bool use_cudnn_on_gpu=true, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrBool(op.get(), "use_cudnn_on_gpu", (unsigned char)use_cudnn_on_gpu);
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv2_d_backprop_filter(const tensor& input, const tensor& filter_sizes, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, bool use_cudnn_on_gpu=true, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv2DBackpropFilter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrBool(op.get(), "use_cudnn_on_gpu", (unsigned char)use_cudnn_on_gpu);
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv2_d_backprop_input(const tensor& input_sizes, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, bool use_cudnn_on_gpu=true, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv2DBackpropInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrBool(op.get(), "use_cudnn_on_gpu", (unsigned char)use_cudnn_on_gpu);
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv3_d(const tensor& input, const tensor& filter, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& dilations, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv3_d_backprop_filter(const tensor& input, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& dilations) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv3DBackpropFilter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv3_d_backprop_filter_v2(const tensor& input, const tensor& filter_sizes, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& dilations, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv3DBackpropFilterV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv3_d_backprop_input(const tensor& input, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& dilations) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv3DBackpropInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor conv3_d_backprop_input_v2(const tensor& input_sizes, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& dilations, const std::string& data_format="NDHWC", datatype Tshape=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Conv3DBackpropInputV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());
    TFE_OpSetAttrType(op.get(), "Tshape", Tshape);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor copy(const tensor& input, const std::vector< std::string>& debug_ops_spec, const std::string& tensor_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Copy", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_ops_spec_sizes; debug_ops_spec_sizes.reserve(debug_ops_spec.size());
    std::transform(debug_ops_spec.begin(), debug_ops_spec.end(), std::back_inserter(debug_ops_spec_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_ops_spec", reinterpret_cast<const void *const *>(debug_ops_spec.data()), debug_ops_spec_sizes.data(), debug_ops_spec.size());
    
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor copy_host(const tensor& input, const std::vector< std::string>& debug_ops_spec, const std::string& tensor_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CopyHost", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_ops_spec_sizes; debug_ops_spec_sizes.reserve(debug_ops_spec.size());
    std::transform(debug_ops_spec.begin(), debug_ops_spec.end(), std::back_inserter(debug_ops_spec_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_ops_spec", reinterpret_cast<const void *const *>(debug_ops_spec.data()), debug_ops_spec_sizes.data(), debug_ops_spec.size());
    
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cos(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cos", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cosh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cosh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor count_up_to(const tensor& ref, int64_t limit) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CountUpTo", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "limit", limit);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor crop_and_resize(const tensor& image, const tensor& boxes, const tensor& box_ind, const tensor& crop_size, const std::string& method="bilinear", float extrapolation_value=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CropAndResize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), box_ind.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), crop_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "method", (void*) method.c_str(), method.size());
    TFE_OpSetAttrFloat(op.get(), "extrapolation_value", extrapolation_value);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor crop_and_resize_grad_boxes(const tensor& grads, const tensor& image, const tensor& boxes, const tensor& box_ind, const std::string& method="bilinear") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CropAndResizeGradBoxes", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), box_ind.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "method", (void*) method.c_str(), method.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor crop_and_resize_grad_image(const tensor& grads, const tensor& boxes, const tensor& box_ind, const tensor& image_size, const std::string& method="bilinear") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CropAndResizeGradImage", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), box_ind.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), image_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "method", (void*) method.c_str(), method.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cross(const tensor& a, const tensor& b) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cross", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cross_replica_sum(const tensor& input, const tensor& group_assignment) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CrossReplicaSum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), group_assignment.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cudnn_r_n_n_canonical_to_params(const tensor& num_layers, const tensor& num_units, const tensor& input_size, const std::vector<tensor>&weights, const std::vector<tensor>&biases, const std::string& rnn_mode="lstm", const std::string& input_mode="linear_input", const std::string& direction="unidirectional", float dropout=0.0000e+00, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CudnnRNNCanonicalToParams", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), num_layers.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_units.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> weights_handles; weights_handles.reserve(weights.size());
    std::transform(weights.begin(), weights.end(), std::back_inserter(weights_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), weights_handles.data(), weights.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> biases_handles; biases_handles.reserve(biases.size());
    std::transform(biases.begin(), biases.end(), std::back_inserter(biases_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), biases_handles.data(), biases.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_params", weights.size());
    TFE_OpSetAttrString(op.get(), "rnn_mode", (void*) rnn_mode.c_str(), rnn_mode.size());
    TFE_OpSetAttrString(op.get(), "input_mode", (void*) input_mode.c_str(), input_mode.size());
    TFE_OpSetAttrString(op.get(), "direction", (void*) direction.c_str(), direction.size());
    TFE_OpSetAttrFloat(op.get(), "dropout", dropout);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cudnn_r_n_n_canonical_to_params_v2(const tensor& num_layers, const tensor& num_units, const tensor& input_size, const std::vector<tensor>&weights, const std::vector<tensor>&biases, const std::string& rnn_mode="lstm", const std::string& input_mode="linear_input", const std::string& direction="unidirectional", float dropout=0.0000e+00, int64_t seed=0, int64_t seed2=0, int64_t num_proj=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CudnnRNNCanonicalToParamsV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), num_layers.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_units.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> weights_handles; weights_handles.reserve(weights.size());
    std::transform(weights.begin(), weights.end(), std::back_inserter(weights_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), weights_handles.data(), weights.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> biases_handles; biases_handles.reserve(biases.size());
    std::transform(biases.begin(), biases.end(), std::back_inserter(biases_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), biases_handles.data(), biases.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_params_weights", weights.size());
    TFE_OpSetAttrInt(op.get(), "num_params_biases", biases.size());
    TFE_OpSetAttrString(op.get(), "rnn_mode", (void*) rnn_mode.c_str(), rnn_mode.size());
    TFE_OpSetAttrString(op.get(), "input_mode", (void*) input_mode.c_str(), input_mode.size());
    TFE_OpSetAttrString(op.get(), "direction", (void*) direction.c_str(), direction.size());
    TFE_OpSetAttrFloat(op.get(), "dropout", dropout);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrInt(op.get(), "num_proj", num_proj);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cudnn_r_n_n_params_size(const tensor& num_layers, const tensor& num_units, const tensor& input_size, datatype S, const std::string& rnn_mode="lstm", const std::string& input_mode="linear_input", const std::string& direction="unidirectional", float dropout=0.0000e+00, int64_t seed=0, int64_t seed2=0, int64_t num_proj=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CudnnRNNParamsSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), num_layers.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_units.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrString(op.get(), "rnn_mode", (void*) rnn_mode.c_str(), rnn_mode.size());
    TFE_OpSetAttrString(op.get(), "input_mode", (void*) input_mode.c_str(), input_mode.size());
    TFE_OpSetAttrString(op.get(), "direction", (void*) direction.c_str(), direction.size());
    TFE_OpSetAttrFloat(op.get(), "dropout", dropout);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrInt(op.get(), "num_proj", num_proj);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cumprod(const tensor& x, const tensor& axis, bool exclusive=false, bool reverse=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cumprod", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "exclusive", (unsigned char)exclusive);
    TFE_OpSetAttrBool(op.get(), "reverse", (unsigned char)reverse);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cumsum(const tensor& x, const tensor& axis, bool exclusive=false, bool reverse=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Cumsum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "exclusive", (unsigned char)exclusive);
    TFE_OpSetAttrBool(op.get(), "reverse", (unsigned char)reverse);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor cumulative_logsumexp(const tensor& x, const tensor& axis, bool exclusive=false, bool reverse=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "CumulativeLogsumexp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "exclusive", (unsigned char)exclusive);
    TFE_OpSetAttrBool(op.get(), "reverse", (unsigned char)reverse);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor data_format_dim_map(const tensor& x, const std::string& src_format="NHWC", const std::string& dst_format="NCHW") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DataFormatDimMap", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "src_format", (void*) src_format.c_str(), src_format.size());
    TFE_OpSetAttrString(op.get(), "dst_format", (void*) dst_format.c_str(), dst_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor data_format_vec_permute(const tensor& x, const std::string& src_format="NHWC", const std::string& dst_format="NCHW") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DataFormatVecPermute", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "src_format", (void*) src_format.c_str(), src_format.size());
    TFE_OpSetAttrString(op.get(), "dst_format", (void*) dst_format.c_str(), dst_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor data_service_dataset(const tensor& dataset_id, const tensor& processing_mode, const tensor& address, const tensor& protocol, const tensor& job_name, const tensor& max_outstanding_requests, const tensor& iteration_counter, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, int64_t task_refresh_interval_hint_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DataServiceDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dataset_id.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), processing_mode.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), address.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), protocol.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), job_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_outstanding_requests.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), iteration_counter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "task_refresh_interval_hint_ms", task_refresh_interval_hint_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dataset_cardinality(const tensor& input_dataset) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DatasetCardinality", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dataset_from_graph(const tensor& graph_def) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DatasetFromGraph", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), graph_def.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dataset_to_graph(const tensor& input_dataset, const std::vector< std::string>& stateful_whitelist, bool allow_stateful=false, bool strip_device_assignment=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DatasetToGraph", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> stateful_whitelist_sizes; stateful_whitelist_sizes.reserve(stateful_whitelist.size());
    std::transform(stateful_whitelist.begin(), stateful_whitelist.end(), std::back_inserter(stateful_whitelist_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "stateful_whitelist", reinterpret_cast<const void *const *>(stateful_whitelist.data()), stateful_whitelist_sizes.data(), stateful_whitelist.size());
    
    TFE_OpSetAttrBool(op.get(), "allow_stateful", (unsigned char)allow_stateful);
    TFE_OpSetAttrBool(op.get(), "strip_device_assignment", (unsigned char)strip_device_assignment);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dataset_to_graph_v2(const tensor& input_dataset, int64_t external_state_policy=0, bool strip_device_assignment=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DatasetToGraphV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "external_state_policy", external_state_policy);
    TFE_OpSetAttrBool(op.get(), "strip_device_assignment", (unsigned char)strip_device_assignment);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dataset_to_single_element(const tensor& dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DatasetToSingleElement", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dawsn(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Dawsn", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_gradient_identity(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugGradientIdentity", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_gradient_ref_identity(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugGradientRefIdentity", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_identity(const tensor& input, const std::vector< std::string>& debug_urls, const std::string& device_name="", const std::string& tensor_name="", bool gated_grpc=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugIdentity", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_urls_sizes; debug_urls_sizes.reserve(debug_urls.size());
    std::transform(debug_urls.begin(), debug_urls.end(), std::back_inserter(debug_urls_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_urls", reinterpret_cast<const void *const *>(debug_urls.data()), debug_urls_sizes.data(), debug_urls.size());
    
    TFE_OpSetAttrString(op.get(), "device_name", (void*) device_name.c_str(), device_name.size());
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());
    TFE_OpSetAttrBool(op.get(), "gated_grpc", (unsigned char)gated_grpc);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_identity_v2(const tensor& input, const std::vector< std::string>& debug_urls, const std::string& tfdbg_context_id="", const std::string& op_name="", int64_t output_slot=-1, int64_t tensor_debug_mode=-1, int64_t circular_buffer_size=1000, const std::string& tfdbg_run_id="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugIdentityV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_urls_sizes; debug_urls_sizes.reserve(debug_urls.size());
    std::transform(debug_urls.begin(), debug_urls.end(), std::back_inserter(debug_urls_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_urls", reinterpret_cast<const void *const *>(debug_urls.data()), debug_urls_sizes.data(), debug_urls.size());
    
    TFE_OpSetAttrString(op.get(), "tfdbg_context_id", (void*) tfdbg_context_id.c_str(), tfdbg_context_id.size());
    TFE_OpSetAttrString(op.get(), "op_name", (void*) op_name.c_str(), op_name.size());
    TFE_OpSetAttrInt(op.get(), "output_slot", output_slot);
    TFE_OpSetAttrInt(op.get(), "tensor_debug_mode", tensor_debug_mode);
    TFE_OpSetAttrInt(op.get(), "circular_buffer_size", circular_buffer_size);
    TFE_OpSetAttrString(op.get(), "tfdbg_run_id", (void*) tfdbg_run_id.c_str(), tfdbg_run_id.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_nan_count(const tensor& input, const std::vector< std::string>& debug_urls, const std::string& device_name="", const std::string& tensor_name="", bool gated_grpc=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugNanCount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_urls_sizes; debug_urls_sizes.reserve(debug_urls.size());
    std::transform(debug_urls.begin(), debug_urls.end(), std::back_inserter(debug_urls_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_urls", reinterpret_cast<const void *const *>(debug_urls.data()), debug_urls_sizes.data(), debug_urls.size());
    
    TFE_OpSetAttrString(op.get(), "device_name", (void*) device_name.c_str(), device_name.size());
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());
    TFE_OpSetAttrBool(op.get(), "gated_grpc", (unsigned char)gated_grpc);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_numeric_summary(const tensor& input, const std::vector< std::string>& debug_urls, const std::string& device_name="", const std::string& tensor_name="", float lower_bound=-std::numeric_limits<float>::infinity(), float upper_bound=std::numeric_limits<float>::infinity(), bool mute_if_healthy=false, bool gated_grpc=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugNumericSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> debug_urls_sizes; debug_urls_sizes.reserve(debug_urls.size());
    std::transform(debug_urls.begin(), debug_urls.end(), std::back_inserter(debug_urls_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "debug_urls", reinterpret_cast<const void *const *>(debug_urls.data()), debug_urls_sizes.data(), debug_urls.size());
    
    TFE_OpSetAttrString(op.get(), "device_name", (void*) device_name.c_str(), device_name.size());
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());
    TFE_OpSetAttrFloat(op.get(), "lower_bound", lower_bound);
    TFE_OpSetAttrFloat(op.get(), "upper_bound", upper_bound);
    TFE_OpSetAttrBool(op.get(), "mute_if_healthy", (unsigned char)mute_if_healthy);
    TFE_OpSetAttrBool(op.get(), "gated_grpc", (unsigned char)gated_grpc);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor debug_numeric_summary_v2(const tensor& input, datatype output_dtype=static_cast<datatype>(1), int64_t tensor_debug_mode=-1, int64_t tensor_id=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DebugNumericSummaryV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "output_dtype", output_dtype);
    TFE_OpSetAttrInt(op.get(), "tensor_debug_mode", tensor_debug_mode);
    TFE_OpSetAttrInt(op.get(), "tensor_id", tensor_id);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_and_crop_jpeg(const tensor& contents, const tensor& crop_window, int64_t channels=0, int64_t ratio=1, bool fancy_upscaling=true, bool try_recover_truncated=false, float acceptable_fraction=1.0000e+00, const std::string& dct_method="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeAndCropJpeg", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), crop_window.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "channels", channels);
    TFE_OpSetAttrInt(op.get(), "ratio", ratio);
    TFE_OpSetAttrBool(op.get(), "fancy_upscaling", (unsigned char)fancy_upscaling);
    TFE_OpSetAttrBool(op.get(), "try_recover_truncated", (unsigned char)try_recover_truncated);
    TFE_OpSetAttrFloat(op.get(), "acceptable_fraction", acceptable_fraction);
    TFE_OpSetAttrString(op.get(), "dct_method", (void*) dct_method.c_str(), dct_method.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_base64(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeBase64", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_bmp(const tensor& contents, int64_t channels=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeBmp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "channels", channels);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_c_s_v(const tensor& records, const std::vector<tensor>&record_defaults, const std::vector<datatype>& OUT_TYPE, const std::vector<int64_t>& select_cols, const std::string& field_delim=",", bool use_quote_delim=true, const std::string& na_value="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeCSV", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), records.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> record_defaults_handles; record_defaults_handles.reserve(record_defaults.size());
    std::transform(record_defaults.begin(), record_defaults.end(), std::back_inserter(record_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), record_defaults_handles.data(), record_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "OUT_TYPE", reinterpret_cast<const enum TF_DataType *>(OUT_TYPE.data()), OUT_TYPE.size());
    TFE_OpSetAttrIntList(op.get(), "select_cols", select_cols.data(), select_cols.size());
    TFE_OpSetAttrString(op.get(), "field_delim", (void*) field_delim.c_str(), field_delim.size());
    TFE_OpSetAttrBool(op.get(), "use_quote_delim", (unsigned char)use_quote_delim);
    TFE_OpSetAttrString(op.get(), "na_value", (void*) na_value.c_str(), na_value.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_compressed(const tensor& bytes, const std::string& compression_type="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeCompressed", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "compression_type", (void*) compression_type.c_str(), compression_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_gif(const tensor& contents) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeGif", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_j_s_o_n_example(const tensor& json_examples) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeJSONExample", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), json_examples.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_jpeg(const tensor& contents, int64_t channels=0, int64_t ratio=1, bool fancy_upscaling=true, bool try_recover_truncated=false, float acceptable_fraction=1.0000e+00, const std::string& dct_method="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeJpeg", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "channels", channels);
    TFE_OpSetAttrInt(op.get(), "ratio", ratio);
    TFE_OpSetAttrBool(op.get(), "fancy_upscaling", (unsigned char)fancy_upscaling);
    TFE_OpSetAttrBool(op.get(), "try_recover_truncated", (unsigned char)try_recover_truncated);
    TFE_OpSetAttrFloat(op.get(), "acceptable_fraction", acceptable_fraction);
    TFE_OpSetAttrString(op.get(), "dct_method", (void*) dct_method.c_str(), dct_method.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_padded_raw(const tensor& input_bytes, const tensor& fixed_length, datatype out_type, bool little_endian=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodePaddedRaw", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fixed_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);
    TFE_OpSetAttrBool(op.get(), "little_endian", (unsigned char)little_endian);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_png(const tensor& contents, int64_t channels=0, datatype dtype=static_cast<datatype>(4)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodePng", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "channels", channels);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor decode_raw(const tensor& bytes, datatype out_type, bool little_endian=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DecodeRaw", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);
    TFE_OpSetAttrBool(op.get(), "little_endian", (unsigned char)little_endian);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor deep_copy(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DeepCopy", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dense_bincount(const tensor& input, const tensor& size, const tensor& weights, datatype Tidx, bool binary_output=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DenseBincount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), weights.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrBool(op.get(), "binary_output", (unsigned char)binary_output);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dense_to_c_s_r_sparse_matrix(const tensor& dense_input, const tensor& indices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DenseToCSRSparseMatrix", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dense_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dense_to_sparse_batch_dataset(const tensor& input_dataset, const tensor& batch_size, const tensor& row_shape, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DenseToSparseBatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), row_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor depth_to_space(const tensor& input, int64_t block_size, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DepthToSpace", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "block_size", block_size);
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor depthwise_conv2d_native(const tensor& input, const tensor& filter, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DepthwiseConv2dNative", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor depthwise_conv2d_native_backprop_filter(const tensor& input, const tensor& filter_sizes, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DepthwiseConv2dNativeBackpropFilter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor depthwise_conv2d_native_backprop_input(const tensor& input_sizes, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::string& padding, const std::vector<int64_t>& explicit_paddings, const std::vector<int64_t>& dilations, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DepthwiseConv2dNativeBackpropInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrIntList(op.get(), "explicit_paddings", explicit_paddings.data(), explicit_paddings.size());
    TFE_OpSetAttrIntList(op.get(), "dilations", dilations.data(), dilations.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dequantize(const tensor& input, const tensor& min_range, const tensor& max_range, const std::string& mode="MIN_COMBINED", bool narrow_range=false, int64_t axis=-1, datatype dtype=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Dequantize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min_range.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_range.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);
    TFE_OpSetAttrInt(op.get(), "axis", axis);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor destroy_temporary_variable(const tensor& ref, const std::string& var_name) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DestroyTemporaryVariable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "var_name", (void*) var_name.c_str(), var_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor device_index(const std::vector< std::string>& device_names) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DeviceIndex", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    std::vector<std::size_t> device_names_sizes; device_names_sizes.reserve(device_names.size());
    std::transform(device_names.begin(), device_names.end(), std::back_inserter(device_names_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "device_names", reinterpret_cast<const void *const *>(device_names.data()), device_names_sizes.data(), device_names.size());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor diag(const tensor& diagonal) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Diag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor diag_part(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DiagPart", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor digamma(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Digamma", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dilation2_d(const tensor& input, const tensor& filter, const std::vector<int64_t>& strides, const std::vector<int64_t>& rates, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Dilation2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrIntList(op.get(), "rates", rates.data(), rates.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dilation2_d_backprop_filter(const tensor& input, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::vector<int64_t>& rates, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Dilation2DBackpropFilter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrIntList(op.get(), "rates", rates.data(), rates.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dilation2_d_backprop_input(const tensor& input, const tensor& filter, const tensor& out_backprop, const std::vector<int64_t>& strides, const std::vector<int64_t>& rates, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Dilation2DBackpropInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrIntList(op.get(), "rates", rates.data(), rates.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor directed_interleave_dataset(const tensor& selector_input_dataset, const std::vector<tensor>&data_input_datasets, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DirectedInterleaveDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), selector_input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> data_input_datasets_handles; data_input_datasets_handles.reserve(data_input_datasets.size());
    std::transform(data_input_datasets.begin(), data_input_datasets.end(), std::back_inserter(data_input_datasets_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), data_input_datasets_handles.data(), data_input_datasets.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "N", data_input_datasets.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor div(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Div", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor div_no_nan(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DivNoNan", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor draw_bounding_boxes(const tensor& images, const tensor& boxes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DrawBoundingBoxes", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor draw_bounding_boxes_v2(const tensor& images, const tensor& boxes, const tensor& colors) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DrawBoundingBoxesV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), colors.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dummy_iteration_counter() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DummyIterationCounter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dummy_memory_cache() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DummyMemoryCache", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dummy_seed_generator() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DummySeedGenerator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dynamic_partition(const tensor& data, const tensor& partitions, int64_t num_partitions) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DynamicPartition", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), partitions.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_partitions", num_partitions);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor dynamic_stitch(const std::vector<tensor>&indices, const std::vector<tensor>&data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "DynamicStitch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> indices_handles; indices_handles.reserve(indices.size());
    std::transform(indices.begin(), indices.end(), std::back_inserter(indices_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), indices_handles.data(), indices.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> data_handles; data_handles.reserve(data.size());
    std::transform(data.begin(), data.end(), std::back_inserter(data_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), data_handles.data(), data.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", indices.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor eager_py_func(const std::vector<tensor>&input, const std::string& token, const std::vector<datatype>& Tin, const std::vector<datatype>& Tout, bool is_async=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EagerPyFunc", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "token", (void*) token.c_str(), token.size());
    TFE_OpSetAttrTypeList(op.get(), "Tin", reinterpret_cast<const enum TF_DataType *>(Tin.data()), Tin.size());
    TFE_OpSetAttrTypeList(op.get(), "Tout", reinterpret_cast<const enum TF_DataType *>(Tout.data()), Tout.size());
    TFE_OpSetAttrBool(op.get(), "is_async", (unsigned char)is_async);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor edit_distance(const tensor& hypothesis_indices, const tensor& hypothesis_values, const tensor& hypothesis_shape, const tensor& truth_indices, const tensor& truth_values, const tensor& truth_shape, bool normalize=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EditDistance", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), hypothesis_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), hypothesis_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), hypothesis_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), truth_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), truth_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), truth_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "normalize", (unsigned char)normalize);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor einsum(const std::vector<tensor>&inputs, const std::string& equation) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Einsum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "equation", (void*) equation.c_str(), equation.size());
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor elu(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Elu", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor elu_grad(const tensor& gradients, const tensor& outputs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EluGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), outputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor empty(const tensor& shape, datatype dtype, bool init=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Empty", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrBool(op.get(), "init", (unsigned char)init);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor empty_tensor_list(const tensor& element_shape, const tensor& max_num_elements, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EmptyTensorList", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_num_elements.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_base64(const tensor& input, bool pad=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodeBase64", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "pad", (unsigned char)pad);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_jpeg(const tensor& image, const std::string& format="", int64_t quality=95, bool progressive=false, bool optimize_size=false, bool chroma_downsampling=true, const std::string& density_unit="in", int64_t x_density=300, int64_t y_density=300, const std::string& xmp_metadata="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodeJpeg", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "format", (void*) format.c_str(), format.size());
    TFE_OpSetAttrInt(op.get(), "quality", quality);
    TFE_OpSetAttrBool(op.get(), "progressive", (unsigned char)progressive);
    TFE_OpSetAttrBool(op.get(), "optimize_size", (unsigned char)optimize_size);
    TFE_OpSetAttrBool(op.get(), "chroma_downsampling", (unsigned char)chroma_downsampling);
    TFE_OpSetAttrString(op.get(), "density_unit", (void*) density_unit.c_str(), density_unit.size());
    TFE_OpSetAttrInt(op.get(), "x_density", x_density);
    TFE_OpSetAttrInt(op.get(), "y_density", y_density);
    TFE_OpSetAttrString(op.get(), "xmp_metadata", (void*) xmp_metadata.c_str(), xmp_metadata.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_jpeg_variable_quality(const tensor& images, const tensor& quality) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodeJpegVariableQuality", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), quality.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_png(const tensor& image, int64_t compression=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodePng", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "compression", compression);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_proto(const tensor& sizes, const std::vector<tensor>&values, const std::vector< std::string>& field_names, const std::string& message_type, const std::vector<datatype>& Tinput_types, const std::string& descriptor_source="local://") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodeProto", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sizes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> values_handles; values_handles.reserve(values.size());
    std::transform(values.begin(), values.end(), std::back_inserter(values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), values_handles.data(), values.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> field_names_sizes; field_names_sizes.reserve(field_names.size());
    std::transform(field_names.begin(), field_names.end(), std::back_inserter(field_names_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "field_names", reinterpret_cast<const void *const *>(field_names.data()), field_names_sizes.data(), field_names.size());
    
    TFE_OpSetAttrString(op.get(), "message_type", (void*) message_type.c_str(), message_type.size());
    TFE_OpSetAttrTypeList(op.get(), "Tinput_types", reinterpret_cast<const enum TF_DataType *>(Tinput_types.data()), Tinput_types.size());
    TFE_OpSetAttrString(op.get(), "descriptor_source", (void*) descriptor_source.c_str(), descriptor_source.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor encode_wav(const tensor& audio, const tensor& sample_rate) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EncodeWav", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), audio.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sample_rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ensure_shape(const tensor& input, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EnsureShape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor enter(const tensor& data, const std::string& frame_name, bool is_constant=false, int64_t parallel_iterations=10) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Enter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "frame_name", (void*) frame_name.c_str(), frame_name.size());
    TFE_OpSetAttrBool(op.get(), "is_constant", (unsigned char)is_constant);
    TFE_OpSetAttrInt(op.get(), "parallel_iterations", parallel_iterations);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor equal(const tensor& x, const tensor& y, bool incompatible_shape_error=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Equal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "incompatible_shape_error", (unsigned char)incompatible_shape_error);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor erf(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Erf", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor erfc(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Erfc", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor erfinv(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Erfinv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor euclidean_norm(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "EuclideanNorm", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor exit(const tensor& data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Exit", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor exp(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Exp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor expand_dims(const tensor& input, const tensor& dim, datatype Tdim=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExpandDims", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tdim", Tdim);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_assert_next_dataset(const tensor& input_dataset, const tensor& transformations, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalAssertNextDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), transformations.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_auto_shard_dataset(const tensor& input_dataset, const tensor& num_workers, const tensor& index, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, int64_t auto_shard_policy=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalAutoShardDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_workers.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "auto_shard_policy", auto_shard_policy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_bytes_produced_stats_dataset(const tensor& input_dataset, const tensor& tag, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalBytesProducedStatsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_c_s_v_dataset(const tensor& filenames, const tensor& compression_type, const tensor& buffer_size, const tensor& header, const tensor& field_delim, const tensor& use_quote_delim, const tensor& na_value, const tensor& select_cols, const std::vector<tensor>&record_defaults, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalCSVDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), compression_type.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), header.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), field_delim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), use_quote_delim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), na_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), select_cols.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> record_defaults_handles; record_defaults_handles.reserve(record_defaults.size());
    std::transform(record_defaults.begin(), record_defaults.end(), std::back_inserter(record_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), record_defaults_handles.data(), record_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_choose_fastest_dataset(const std::vector<tensor>&input_datasets, int64_t num_experiments, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalChooseFastestDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_datasets_handles; input_datasets_handles.reserve(input_datasets.size());
    std::transform(input_datasets.begin(), input_datasets.end(), std::back_inserter(input_datasets_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_datasets_handles.data(), input_datasets.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", input_datasets.size());
    TFE_OpSetAttrInt(op.get(), "num_experiments", num_experiments);
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_dataset_cardinality(const tensor& input_dataset) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalDatasetCardinality", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_dense_to_sparse_batch_dataset(const tensor& input_dataset, const tensor& batch_size, const tensor& row_shape, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalDenseToSparseBatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), row_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_directed_interleave_dataset(const tensor& selector_input_dataset, const std::vector<tensor>&data_input_datasets, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalDirectedInterleaveDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), selector_input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> data_input_datasets_handles; data_input_datasets_handles.reserve(data_input_datasets.size());
    std::transform(data_input_datasets.begin(), data_input_datasets.end(), std::back_inserter(data_input_datasets_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), data_input_datasets_handles.data(), data_input_datasets.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "N", data_input_datasets.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_ignore_errors_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalIgnoreErrorsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_iterator_get_device(const tensor& resource) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalIteratorGetDevice", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_l_m_d_b_dataset(const tensor& filenames, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalLMDBDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_latency_stats_dataset(const tensor& input_dataset, const tensor& tag, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalLatencyStatsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_matching_files_dataset(const tensor& patterns) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalMatchingFilesDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), patterns.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_max_intra_op_parallelism_dataset(const tensor& input_dataset, const tensor& max_intra_op_parallelism, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalMaxIntraOpParallelismDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_intra_op_parallelism.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_non_serializable_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalNonSerializableDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_parse_example_dataset(const tensor& input_dataset, const tensor& num_parallel_calls, const std::vector<tensor>&dense_defaults, const std::vector< std::string>& sparse_keys, const std::vector< std::string>& dense_keys, const std::vector<datatype>& sparse_types, const std::vector<datatype>& Tdense, const std::vector< std::vector<int64_t>>& dense_shapes, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool sloppy=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalParseExampleDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_parallel_calls.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> dense_defaults_handles; dense_defaults_handles.reserve(dense_defaults.size());
    std::transform(dense_defaults.begin(), dense_defaults.end(), std::back_inserter(dense_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), dense_defaults_handles.data(), dense_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> sparse_keys_sizes; sparse_keys_sizes.reserve(sparse_keys.size());
    std::transform(sparse_keys.begin(), sparse_keys.end(), std::back_inserter(sparse_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "sparse_keys", reinterpret_cast<const void *const *>(sparse_keys.data()), sparse_keys_sizes.data(), sparse_keys.size());
    
    
    std::vector<std::size_t> dense_keys_sizes; dense_keys_sizes.reserve(dense_keys.size());
    std::transform(dense_keys.begin(), dense_keys.end(), std::back_inserter(dense_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "dense_keys", reinterpret_cast<const void *const *>(dense_keys.data()), dense_keys_sizes.data(), dense_keys.size());
    
    TFE_OpSetAttrTypeList(op.get(), "sparse_types", reinterpret_cast<const enum TF_DataType *>(sparse_types.data()), sparse_types.size());
    TFE_OpSetAttrTypeList(op.get(), "Tdense", reinterpret_cast<const enum TF_DataType *>(Tdense.data()), Tdense.size());
    
    std::vector<const int64_t*> dense_shapes_values; dense_shapes_values.reserve(dense_shapes.size());
    std::vector<int> dense_shapes_ndims; dense_shapes_ndims.reserve(dense_shapes.size());
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_values), [](const auto& v) { return v.data();});
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "dense_shapes", dense_shapes_values.data(), dense_shapes_ndims.data(), dense_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "sloppy", (unsigned char)sloppy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_private_thread_pool_dataset(const tensor& input_dataset, const tensor& num_threads, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalPrivateThreadPoolDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_threads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_random_dataset(const tensor& seed, const tensor& seed2, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalRandomDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_rebatch_dataset(const tensor& input_dataset, const tensor& num_replicas, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool use_fallback=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalRebatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_replicas.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "use_fallback", (unsigned char)use_fallback);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_set_stats_aggregator_dataset(const tensor& input_dataset, const tensor& stats_aggregator, const tensor& tag, const tensor& counter_prefix, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalSetStatsAggregatorDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stats_aggregator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), counter_prefix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_sleep_dataset(const tensor& input_dataset, const tensor& sleep_microseconds, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalSleepDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sleep_microseconds.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_sliding_window_dataset(const tensor& input_dataset, const tensor& window_size, const tensor& window_shift, const tensor& window_stride, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalSlidingWindowDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_shift.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_stride.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_sql_dataset(const tensor& driver_name, const tensor& data_source_name, const tensor& query, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalSqlDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), driver_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), data_source_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), query.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_stats_aggregator_handle(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalStatsAggregatorHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_stats_aggregator_summary(const tensor& iterator) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalStatsAggregatorSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_thread_pool_dataset(const tensor& input_dataset, const tensor& thread_pool, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalThreadPoolDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), thread_pool.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_thread_pool_handle(int64_t num_threads, const std::string& display_name, int64_t max_intra_op_parallelism=1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalThreadPoolHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_threads", num_threads);
    TFE_OpSetAttrString(op.get(), "display_name", (void*) display_name.c_str(), display_name.size());
    TFE_OpSetAttrInt(op.get(), "max_intra_op_parallelism", max_intra_op_parallelism);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_unbatch_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalUnbatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor experimental_unique_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExperimentalUniqueDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor expint(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Expint", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor expm1(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Expm1", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor extract_glimpse(const tensor& input, const tensor& size, const tensor& offsets, bool centered=true, bool normalized=true, bool uniform_noise=true, const std::string& noise="uniform") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExtractGlimpse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), offsets.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "centered", (unsigned char)centered);
    TFE_OpSetAttrBool(op.get(), "normalized", (unsigned char)normalized);
    TFE_OpSetAttrBool(op.get(), "uniform_noise", (unsigned char)uniform_noise);
    TFE_OpSetAttrString(op.get(), "noise", (void*) noise.c_str(), noise.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor extract_glimpse_v2(const tensor& input, const tensor& size, const tensor& offsets, bool centered=true, bool normalized=true, bool uniform_noise=true, const std::string& noise="uniform") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExtractGlimpseV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), offsets.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "centered", (unsigned char)centered);
    TFE_OpSetAttrBool(op.get(), "normalized", (unsigned char)normalized);
    TFE_OpSetAttrBool(op.get(), "uniform_noise", (unsigned char)uniform_noise);
    TFE_OpSetAttrString(op.get(), "noise", (void*) noise.c_str(), noise.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor extract_image_patches(const tensor& images, const std::vector<int64_t>& ksizes, const std::vector<int64_t>& strides, const std::vector<int64_t>& rates, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExtractImagePatches", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksizes", ksizes.data(), ksizes.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrIntList(op.get(), "rates", rates.data(), rates.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor extract_jpeg_shape(const tensor& contents, datatype output_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExtractJpegShape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), contents.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "output_type", output_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor extract_volume_patches(const tensor& input, const std::vector<int64_t>& ksizes, const std::vector<int64_t>& strides, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ExtractVolumePatches", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksizes", ksizes.data(), ksizes.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor f_f_t(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor f_f_t2_d(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor f_f_t3_d(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor f_i_f_o_queue(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FIFOQueue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor f_i_f_o_queue_v2(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FIFOQueueV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fact() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Fact", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_param(datatype dtype, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeParam", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_quant_with_min_max_args(const tensor& inputs, float min=-6.0000e+00, float max=6.0000e+00, int64_t num_bits=8, bool narrow_range=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeQuantWithMinMaxArgs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "min", min);
    TFE_OpSetAttrFloat(op.get(), "max", max);
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_quant_with_min_max_args_gradient(const tensor& gradients, const tensor& inputs, float min=-6.0000e+00, float max=6.0000e+00, int64_t num_bits=8, bool narrow_range=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeQuantWithMinMaxArgsGradient", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "min", min);
    TFE_OpSetAttrFloat(op.get(), "max", max);
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_quant_with_min_max_vars(const tensor& inputs, const tensor& min, const tensor& max, int64_t num_bits=8, bool narrow_range=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeQuantWithMinMaxVars", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_quant_with_min_max_vars_per_channel(const tensor& inputs, const tensor& min, const tensor& max, int64_t num_bits=8, bool narrow_range=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeQuantWithMinMaxVarsPerChannel", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fake_queue(const tensor& resource) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FakeQueue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fill(const tensor& dims, const tensor& value, datatype index_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Fill", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dims.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "index_type", index_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor filter_by_last_component_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FilterByLastComponentDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fingerprint(const tensor& data, const tensor& method) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Fingerprint", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), method.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fixed_length_record_dataset(const tensor& filenames, const tensor& header_bytes, const tensor& record_bytes, const tensor& footer_bytes, const tensor& buffer_size) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FixedLengthRecordDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), header_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), record_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), footer_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fixed_length_record_dataset_v2(const tensor& filenames, const tensor& header_bytes, const tensor& record_bytes, const tensor& footer_bytes, const tensor& buffer_size, const tensor& compression_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FixedLengthRecordDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), header_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), record_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), footer_bytes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), compression_type.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fixed_length_record_reader(int64_t record_bytes, int64_t header_bytes=0, int64_t footer_bytes=0, int64_t hop_bytes=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FixedLengthRecordReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "record_bytes", record_bytes);
    TFE_OpSetAttrInt(op.get(), "header_bytes", header_bytes);
    TFE_OpSetAttrInt(op.get(), "footer_bytes", footer_bytes);
    TFE_OpSetAttrInt(op.get(), "hop_bytes", hop_bytes);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fixed_length_record_reader_v2(int64_t record_bytes, int64_t header_bytes=0, int64_t footer_bytes=0, int64_t hop_bytes=0, const std::string& container="", const std::string& shared_name="", const std::string& encoding="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FixedLengthRecordReaderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "record_bytes", record_bytes);
    TFE_OpSetAttrInt(op.get(), "header_bytes", header_bytes);
    TFE_OpSetAttrInt(op.get(), "footer_bytes", footer_bytes);
    TFE_OpSetAttrInt(op.get(), "hop_bytes", hop_bytes);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "encoding", (void*) encoding.c_str(), encoding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor floor(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Floor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor floor_div(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FloorDiv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor floor_mod(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FloorMod", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fractional_avg_pool_grad(const tensor& orig_input_input_tensor_shape, const tensor& out_backprop, const tensor& row_pooling_sequence, const tensor& col_pooling_sequence, bool overlapping=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FractionalAvgPoolGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input_input_tensor_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), row_pooling_sequence.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), col_pooling_sequence.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "overlapping", (unsigned char)overlapping);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fractional_max_pool_grad(const tensor& orig_input, const tensor& orig_output, const tensor& out_backprop, const tensor& row_pooling_sequence, const tensor& col_pooling_sequence, bool overlapping=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FractionalMaxPoolGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), out_backprop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), row_pooling_sequence.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), col_pooling_sequence.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "overlapping", (unsigned char)overlapping);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fresnel_cos(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FresnelCos", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fresnel_sin(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FresnelSin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fused_pad_conv2_d(const tensor& input, const tensor& paddings, const tensor& filter, const std::string& mode, const std::vector<int64_t>& strides, const std::string& padding) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FusedPadConv2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor fused_resize_and_pad_conv2_d(const tensor& input, const tensor& size, const tensor& paddings, const tensor& filter, const std::string& mode, const std::vector<int64_t>& strides, const std::string& padding, bool resize_align_corners=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "FusedResizeAndPadConv2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), filter.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrBool(op.get(), "resize_align_corners", (unsigned char)resize_align_corners);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor gather(const tensor& params, const tensor& indices, datatype Tparams, datatype Tindices, bool validate_indices=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Gather", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), params.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tparams", Tparams);
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "validate_indices", (unsigned char)validate_indices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor gather_nd(const tensor& params, const tensor& indices, datatype Tparams, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GatherNd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), params.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tparams", Tparams);
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor gather_v2(const tensor& params, const tensor& indices, const tensor& axis, datatype Tparams, datatype Tindices, datatype Taxis, int64_t batch_dims=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GatherV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), params.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tparams", Tparams);
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrType(op.get(), "Taxis", Taxis);
    TFE_OpSetAttrInt(op.get(), "batch_dims", batch_dims);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor get_session_handle(const tensor& value) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GetSessionHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor get_session_handle_v2(const tensor& value) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GetSessionHandleV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor get_session_tensor(const tensor& handle, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GetSessionTensor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor greater(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Greater", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor greater_equal(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GreaterEqual", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor guarantee_const_tensor(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "GuaranteeConst", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor h_s_v_to_r_g_b(const tensor& images) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "HSVToRGB", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor hash_table(datatype key_dtype, datatype value_dtype, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "HashTable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor hash_table_v2(datatype key_dtype, datatype value_dtype, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "HashTableV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor histogram_fixed_width(const tensor& values, const tensor& value_range, const tensor& nbins, datatype dtype=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "HistogramFixedWidth", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value_range.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), nbins.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor histogram_summary(const tensor& tag, const tensor& values) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "HistogramSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_f_f_t(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IFFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_f_f_t2_d(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IFFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_f_f_t3_d(const tensor& input, datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IFFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_r_f_f_t(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IRFFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_r_f_f_t2_d(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IRFFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor i_r_f_f_t3_d(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IRFFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor identity(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Identity", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor identity_n(const std::vector<tensor>&input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IdentityN", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor identity_reader(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IdentityReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor identity_reader_v2(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IdentityReaderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor igamma(const tensor& a, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Igamma", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor igamma_grad_a(const tensor& a, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IgammaGradA", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor igammac(const tensor& a, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Igammac", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ignore_errors_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IgnoreErrorsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor imag(const tensor& input, datatype Tout=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Imag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor image_projective_transform_v2(const tensor& images, const tensor& transforms, const tensor& output_shape, datatype dtype, const std::string& interpolation, const std::string& fill_mode="CONSTANT") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ImageProjectiveTransformV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), transforms.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrString(op.get(), "interpolation", (void*) interpolation.c_str(), interpolation.size());
    TFE_OpSetAttrString(op.get(), "fill_mode", (void*) fill_mode.c_str(), fill_mode.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor image_summary(const tensor& tag, const tensor& input_tensor, const tensor& bad_color, int64_t max_images=3) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ImageSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    TFE_OpSetAttrTensor(op.get(), "bad_color", bad_color.get_tensor().get(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "max_images", max_images);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor immutable_const_tensor(datatype dtype, const std::vector<int64_t>& shape, const std::string& memory_region_name) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ImmutableConst", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "memory_region_name", (void*) memory_region_name.c_str(), memory_region_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor in_top_k(const tensor& predictions, const tensor& targets, int64_t k) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InTopK", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), predictions.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), targets.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "k", k);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor in_top_k_v2(const tensor& predictions, const tensor& targets, const tensor& k) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InTopKV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), predictions.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), targets.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor infeed_dequeue(datatype dtype, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InfeedDequeue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor infeed_dequeue_tuple(const std::vector<datatype>& dtypes, const std::vector< std::vector<int64_t>>& shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InfeedDequeueTuple", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor inplace_add(const tensor& x, const tensor& i, const tensor& v) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InplaceAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), i.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor inplace_sub(const tensor& x, const tensor& i, const tensor& v) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InplaceSub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), i.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor inplace_update(const tensor& x, const tensor& i, const tensor& v) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InplaceUpdate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), i.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), v.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor inv(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Inv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor inv_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InvGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor invert(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Invert", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor invert_permutation(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "InvertPermutation", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_boosted_trees_ensemble_initialized(const tensor& tree_ensemble_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsBoostedTreesEnsembleInitialized", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tree_ensemble_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_boosted_trees_quantile_stream_resource_initialized(const tensor& quantile_stream_resource_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsBoostedTreesQuantileStreamResourceInitialized", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), quantile_stream_resource_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_finite(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsFinite", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_inf(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsInf", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_nan(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsNan", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor is_variable_initialized(const tensor& ref, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IsVariableInitialized", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator(const std::string& shared_name, const std::string& container, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Iterator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_from_string_handle(const tensor& string_handle, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorFromStringHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), string_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_from_string_handle_v2(const tensor& string_handle, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorFromStringHandleV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), string_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_get_device(const tensor& resource) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorGetDevice", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_get_next(const tensor& iterator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorGetNext", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_get_next_as_optional(const tensor& iterator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorGetNextAsOptional", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_get_next_sync(const tensor& iterator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorGetNextSync", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_to_string_handle(const tensor& resource_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorToStringHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor iterator_v2(const std::string& shared_name, const std::string& container, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "IteratorV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor l2_loss(const tensor& t) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "L2Loss", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), t.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor l_m_d_b_dataset(const tensor& filenames, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LMDBDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor l_m_d_b_reader(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LMDBReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor l_r_n(const tensor& input, int64_t depth_radius=5, float bias=1.0000e+00, float alpha=1.0000e+00, float beta=5.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LRN", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "depth_radius", depth_radius);
    TFE_OpSetAttrFloat(op.get(), "bias", bias);
    TFE_OpSetAttrFloat(op.get(), "alpha", alpha);
    TFE_OpSetAttrFloat(op.get(), "beta", beta);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor l_r_n_grad(const tensor& input_grads, const tensor& input_image, const tensor& output_image, int64_t depth_radius=5, float bias=1.0000e+00, float alpha=1.0000e+00, float beta=5.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LRNGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "depth_radius", depth_radius);
    TFE_OpSetAttrFloat(op.get(), "bias", bias);
    TFE_OpSetAttrFloat(op.get(), "alpha", alpha);
    TFE_OpSetAttrFloat(op.get(), "beta", beta);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor latency_stats_dataset(const tensor& input_dataset, const tensor& tag, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LatencyStatsDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor leaky_relu(const tensor& features, float alpha=2.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LeakyRelu", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "alpha", alpha);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor leaky_relu_grad(const tensor& gradients, const tensor& features, float alpha=2.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LeakyReluGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "alpha", alpha);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor left_shift(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LeftShift", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor less(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Less", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor less_equal(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LessEqual", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lgamma(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Lgamma", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lin_space(const tensor& start, const tensor& stop, const tensor& num, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LinSpace", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), start.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor load_and_remap_matrix(const tensor& ckpt_path, const tensor& old_input_tensor_name, const tensor& row_remapping, const tensor& col_remapping, const tensor& initializing_values, int64_t num_rows, int64_t num_cols, int64_t max_rows_in_memory=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LoadAndRemapMatrix", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ckpt_path.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), old_input_tensor_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), row_remapping.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), col_remapping.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), initializing_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_rows", num_rows);
    TFE_OpSetAttrInt(op.get(), "num_cols", num_cols);
    TFE_OpSetAttrInt(op.get(), "max_rows_in_memory", max_rows_in_memory);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor log(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Log", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor log1p(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Log1p", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor log_softmax(const tensor& logits) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LogSoftmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), logits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor logical_and(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LogicalAnd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor logical_not(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LogicalNot", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor logical_or(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LogicalOr", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lookup_table_find(const tensor& table_handle, const tensor& keys, const tensor& default_value, datatype Tin, datatype Tout) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LookupTableFind", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), table_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), keys.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), default_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tin", Tin);
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lookup_table_find_v2(const tensor& table_handle, const tensor& keys, const tensor& default_value, datatype Tin, datatype Tout) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LookupTableFindV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), table_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), keys.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), default_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tin", Tin);
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lookup_table_size(const tensor& table_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LookupTableSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), table_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lookup_table_size_v2(const tensor& table_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LookupTableSizeV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), table_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor loop_cond(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LoopCond", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor lower_bound(const tensor& sorted_inputs, const tensor& values, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "LowerBound", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sorted_inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor map_incomplete_size(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MapIncompleteSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor map_peek(const tensor& key, const tensor& indices, const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MapPeek", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor map_size(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MapSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor map_unstage(const tensor& key, const tensor& indices, const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MapUnstage", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mat_mul(const tensor& a, const tensor& b, bool transpose_a=false, bool transpose_b=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "transpose_a", (unsigned char)transpose_a);
    TFE_OpSetAttrBool(op.get(), "transpose_b", (unsigned char)transpose_b);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matching_files(const tensor& pattern) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatchingFiles", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), pattern.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matching_files_dataset(const tensor& patterns) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatchingFilesDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), patterns.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_band_part(const tensor& input, const tensor& num_lower, const tensor& num_upper, datatype Tindex=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixBandPart", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_lower.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_upper.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindex", Tindex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_determinant(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDeterminant", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag(const tensor& diagonal) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag_part(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiagPart", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag_part_v2(const tensor& input, const tensor& k, const tensor& padding_value) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiagPartV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), padding_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag_part_v3(const tensor& input, const tensor& k, const tensor& padding_value, const std::string& align="RIGHT_LEFT") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiagPartV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), padding_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "align", (void*) align.c_str(), align.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag_v2(const tensor& diagonal, const tensor& k, const tensor& num_rows, const tensor& num_cols, const tensor& padding_value) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiagV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_rows.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_cols.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), padding_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_diag_v3(const tensor& diagonal, const tensor& k, const tensor& num_rows, const tensor& num_cols, const tensor& padding_value, const std::string& align="RIGHT_LEFT") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixDiagV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_rows.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_cols.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), padding_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "align", (void*) align.c_str(), align.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_exponential(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixExponential", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_inverse(const tensor& input, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixInverse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_logarithm(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixLogarithm", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_set_diag(const tensor& input, const tensor& diagonal) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSetDiag", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_set_diag_v2(const tensor& input, const tensor& diagonal, const tensor& k) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSetDiagV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_set_diag_v3(const tensor& input, const tensor& diagonal, const tensor& k, const std::string& align="RIGHT_LEFT") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSetDiagV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), diagonal.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), k.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "align", (void*) align.c_str(), align.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_solve(const tensor& matrix, const tensor& rhs, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_solve_ls(const tensor& matrix, const tensor& rhs, const tensor& l2_regularizer, bool fast=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSolveLs", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2_regularizer.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "fast", (unsigned char)fast);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_square_root(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixSquareRoot", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor matrix_triangular_solve(const tensor& matrix, const tensor& rhs, bool lower=true, bool adjoint=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MatrixTriangularSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "lower", (unsigned char)lower);
    TFE_OpSetAttrBool(op.get(), "adjoint", (unsigned char)adjoint);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Max", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_intra_op_parallelism_dataset(const tensor& input_dataset, const tensor& max_intra_op_parallelism, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxIntraOpParallelismDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_intra_op_parallelism.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool(const tensor& input, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPool", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool3_d(const tensor& input, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPool3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool3_d_grad(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NDHWC", datatype TInput=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPool3DGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());
    TFE_OpSetAttrType(op.get(), "TInput", TInput);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool3_d_grad_grad(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NDHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPool3DGradGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad_grad(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGradGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad_grad_v2(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const tensor& ksize, const tensor& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGradGradV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ksize.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad_grad_with_argmax(const tensor& input, const tensor& grad, const tensor& argmax, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, datatype Targmax, bool include_batch_in_index=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGradGradWithArgmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), argmax.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrType(op.get(), "Targmax", Targmax);
    TFE_OpSetAttrBool(op.get(), "include_batch_in_index", (unsigned char)include_batch_in_index);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad_v2(const tensor& orig_input, const tensor& orig_output, const tensor& grad, const tensor& ksize, const tensor& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGradV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), orig_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), orig_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ksize.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_grad_with_argmax(const tensor& input, const tensor& grad, const tensor& argmax, const std::vector<int64_t>& ksize, const std::vector<int64_t>& strides, const std::string& padding, datatype Targmax, bool include_batch_in_index=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolGradWithArgmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), argmax.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "ksize", ksize.data(), ksize.size());
    TFE_OpSetAttrIntList(op.get(), "strides", strides.data(), strides.size());
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrType(op.get(), "Targmax", Targmax);
    TFE_OpSetAttrBool(op.get(), "include_batch_in_index", (unsigned char)include_batch_in_index);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor max_pool_v2(const tensor& input, const tensor& ksize, const tensor& strides, const std::string& padding, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MaxPoolV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ksize.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "padding", (void*) padding.c_str(), padding.size());
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor maximum(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Maximum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mean(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Mean", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor merge_summary(const std::vector<tensor>&inputs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MergeSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mfcc(const tensor& spectrogram, const tensor& sample_rate, float upper_frequency_limit=4.0000e+03, float lower_frequency_limit=2.0000e+01, int64_t filterbank_channel_count=40, int64_t dct_coefficient_count=13) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Mfcc", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), spectrogram.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sample_rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "upper_frequency_limit", upper_frequency_limit);
    TFE_OpSetAttrFloat(op.get(), "lower_frequency_limit", lower_frequency_limit);
    TFE_OpSetAttrInt(op.get(), "filterbank_channel_count", filterbank_channel_count);
    TFE_OpSetAttrInt(op.get(), "dct_coefficient_count", dct_coefficient_count);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor min(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Min", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor minimum(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Minimum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mirror_pad(const tensor& input, const tensor& paddings, const std::string& mode, datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MirrorPad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mirror_pad_grad(const tensor& input, const tensor& paddings, const std::string& mode, datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MirrorPadGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mod(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Mod", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor model_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, int64_t algorithm=0, int64_t cpu_budget=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ModelDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "algorithm", algorithm);
    TFE_OpSetAttrInt(op.get(), "cpu_budget", cpu_budget);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mul(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Mul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mul_no_nan(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MulNoNan", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multi_device_iterator(const std::vector< std::string>& devices, const std::string& shared_name, const std::string& container, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MultiDeviceIterator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    std::vector<std::size_t> devices_sizes; devices_sizes.reserve(devices.size());
    std::transform(devices.begin(), devices.end(), std::back_inserter(devices_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "devices", reinterpret_cast<const void *const *>(devices.data()), devices_sizes.data(), devices.size());
    
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multi_device_iterator_from_string_handle(const tensor& string_handle, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MultiDeviceIteratorFromStringHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), string_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multi_device_iterator_get_next_from_shard(const tensor& multi_device_iterator, const tensor& shard_num, const tensor& incarnation_id, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MultiDeviceIteratorGetNextFromShard", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), multi_device_iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shard_num.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), incarnation_id.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multi_device_iterator_init(const tensor& dataset, const tensor& multi_device_iterator, const tensor& max_buffer_size) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MultiDeviceIteratorInit", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), multi_device_iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multi_device_iterator_to_string_handle(const tensor& multi_device_iterator) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MultiDeviceIteratorToStringHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), multi_device_iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor multinomial(const tensor& logits, const tensor& num_samples, int64_t seed=0, int64_t seed2=0, datatype output_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Multinomial", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), logits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_samples.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrType(op.get(), "output_dtype", output_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_dense_hash_table(const tensor& empty_key, datatype key_dtype, datatype value_dtype, const std::vector<int64_t>& value_shape, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false, int64_t initial_num_buckets=131072, float max_load_factor=8.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableDenseHashTable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), empty_key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    
    TFE_OpSetAttrShape(op.get(), "value_shape", value_shape.data(), value_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);
    TFE_OpSetAttrInt(op.get(), "initial_num_buckets", initial_num_buckets);
    TFE_OpSetAttrFloat(op.get(), "max_load_factor", max_load_factor);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_dense_hash_table_v2(const tensor& empty_key, const tensor& deleted_key, datatype key_dtype, datatype value_dtype, const std::vector<int64_t>& value_shape, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false, int64_t initial_num_buckets=131072, float max_load_factor=8.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableDenseHashTableV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), empty_key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), deleted_key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    
    TFE_OpSetAttrShape(op.get(), "value_shape", value_shape.data(), value_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);
    TFE_OpSetAttrInt(op.get(), "initial_num_buckets", initial_num_buckets);
    TFE_OpSetAttrFloat(op.get(), "max_load_factor", max_load_factor);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_hash_table(datatype key_dtype, datatype value_dtype, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableHashTable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_hash_table_of_tensors(datatype key_dtype, datatype value_dtype, const std::vector<int64_t>& value_shape, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableHashTableOfTensors", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    
    TFE_OpSetAttrShape(op.get(), "value_shape", value_shape.data(), value_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_hash_table_of_tensors_v2(datatype key_dtype, datatype value_dtype, const std::vector<int64_t>& value_shape, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableHashTableOfTensorsV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    
    TFE_OpSetAttrShape(op.get(), "value_shape", value_shape.data(), value_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutable_hash_table_v2(datatype key_dtype, datatype value_dtype, const std::string& container="", const std::string& shared_name="", bool use_node_name_sharing=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutableHashTableV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "key_dtype", key_dtype);
    TFE_OpSetAttrType(op.get(), "value_dtype", value_dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrBool(op.get(), "use_node_name_sharing", (unsigned char)use_node_name_sharing);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutex_lock(const tensor& mutex) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutexLock", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), mutex.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor mutex_v2(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "MutexV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor nccl_all_reduce(const tensor& input, const std::string& reduction, int64_t num_devices, const std::string& shared_name) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NcclAllReduce", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "reduction", (void*) reduction.c_str(), reduction.size());
    TFE_OpSetAttrInt(op.get(), "num_devices", num_devices);
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor nccl_broadcast(const tensor& input, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NcclBroadcast", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor nccl_reduce(const std::vector<tensor>&input, const std::string& reduction) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NcclReduce", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "reduction", (void*) reduction.c_str(), reduction.size());
    TFE_OpSetAttrInt(op.get(), "num_devices", input.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ndtri(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Ndtri", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor neg(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Neg", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor next_after(const tensor& x1, const tensor& x2) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NextAfter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor next_iteration(const tensor& data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NextIteration", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_deterministic_ints(const tensor& shape, datatype dtype=static_cast<datatype>(9), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonDeterministicInts", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_max_suppression(const tensor& boxes, const tensor& scores, const tensor& max_output_size, float iou_threshold=5.0000e-01) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonMaxSuppression", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scores.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_output_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrFloat(op.get(), "iou_threshold", iou_threshold);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_max_suppression_v2(const tensor& boxes, const tensor& scores, const tensor& max_output_size, const tensor& iou_threshold, datatype T_threshold=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonMaxSuppressionV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scores.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_output_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), iou_threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "T_threshold", T_threshold);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_max_suppression_v3(const tensor& boxes, const tensor& scores, const tensor& max_output_size, const tensor& iou_threshold, const tensor& score_threshold, datatype T_threshold=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonMaxSuppressionV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), boxes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scores.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_output_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), iou_threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), score_threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "T_threshold", T_threshold);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_max_suppression_with_overlaps(const tensor& overlaps, const tensor& scores, const tensor& max_output_size, const tensor& overlap_threshold, const tensor& score_threshold) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonMaxSuppressionWithOverlaps", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), overlaps.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scores.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_output_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), overlap_threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), score_threshold.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor non_serializable_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NonSerializableDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor not_equal(const tensor& x, const tensor& y, bool incompatible_shape_error=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NotEqual", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "incompatible_shape_error", (unsigned char)incompatible_shape_error);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor nth_element(const tensor& input, const tensor& n, bool reverse=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "NthElement", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), n.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "reverse", (unsigned char)reverse);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor one_hot(const tensor& indices, const tensor& depth, const tensor& on_value, const tensor& off_value, int64_t axis=-1, datatype TI=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OneHot", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), depth.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), on_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), off_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "axis", axis);
    TFE_OpSetAttrType(op.get(), "TI", TI);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ones_like(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OnesLike", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor optimize_dataset(const tensor& input_dataset, const tensor& optimizations, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, const std::vector< std::string>& optimization_configs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OptimizeDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), optimizations.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<std::size_t> optimization_configs_sizes; optimization_configs_sizes.reserve(optimization_configs.size());
    std::transform(optimization_configs.begin(), optimization_configs.end(), std::back_inserter(optimization_configs_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "optimization_configs", reinterpret_cast<const void *const *>(optimization_configs.data()), optimization_configs_sizes.data(), optimization_configs.size());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor optional_from_value(const std::vector<tensor>&components, const std::vector<datatype>& Toutput_types) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OptionalFromValue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> components_handles; components_handles.reserve(components.size());
    std::transform(components.begin(), components.end(), std::back_inserter(components_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), components_handles.data(), components.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "Toutput_types", reinterpret_cast<const enum TF_DataType *>(Toutput_types.data()), Toutput_types.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor optional_get_value(const tensor& optional, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OptionalGetValue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), optional.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor optional_has_value(const tensor& optional) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OptionalHasValue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), optional.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor optional_none() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OptionalNone", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ordered_map_incomplete_size(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OrderedMapIncompleteSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ordered_map_peek(const tensor& key, const tensor& indices, const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OrderedMapPeek", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ordered_map_size(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OrderedMapSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ordered_map_unstage(const tensor& key, const tensor& indices, const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OrderedMapUnstage", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), key.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor outfeed_dequeue(datatype dtype, const std::vector<int64_t>& shape, int64_t device_ordinal=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OutfeedDequeue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "device_ordinal", device_ordinal);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor outfeed_dequeue_tuple(const std::vector<datatype>& dtypes, const std::vector< std::vector<int64_t>>& shapes, int64_t device_ordinal=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "OutfeedDequeueTuple", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "device_ordinal", device_ordinal);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor pack(const std::vector<tensor>&values, int64_t axis=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Pack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> values_handles; values_handles.reserve(values.size());
    std::transform(values.begin(), values.end(), std::back_inserter(values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), values_handles.data(), values.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", values.size());
    TFE_OpSetAttrInt(op.get(), "axis", axis);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor pad(const tensor& input, const tensor& paddings, datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Pad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor pad_v2(const tensor& input, const tensor& paddings, const tensor& constant_values, datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PadV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), constant_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor padded_batch_dataset(const tensor& input_dataset, const tensor& batch_size, const std::vector<tensor>&padded_shapes, const std::vector<tensor>&padding_values, const std::vector<datatype>& Toutput_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PaddedBatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> padded_shapes_handles; padded_shapes_handles.reserve(padded_shapes.size());
    std::transform(padded_shapes.begin(), padded_shapes.end(), std::back_inserter(padded_shapes_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), padded_shapes_handles.data(), padded_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> padding_values_handles; padding_values_handles.reserve(padding_values.size());
    std::transform(padding_values.begin(), padding_values.end(), std::back_inserter(padding_values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), padding_values_handles.data(), padding_values.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "Toutput_types", reinterpret_cast<const enum TF_DataType *>(Toutput_types.data()), Toutput_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "N", padded_shapes.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor padded_batch_dataset_v2(const tensor& input_dataset, const tensor& batch_size, const std::vector<tensor>&padded_shapes, const std::vector<tensor>&padding_values, const tensor& drop_remainder, const std::vector<datatype>& Toutput_types, const std::vector< std::vector<int64_t>>& output_shapes, bool parallel_copy=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PaddedBatchDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> padded_shapes_handles; padded_shapes_handles.reserve(padded_shapes.size());
    std::transform(padded_shapes.begin(), padded_shapes.end(), std::back_inserter(padded_shapes_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), padded_shapes_handles.data(), padded_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> padding_values_handles; padding_values_handles.reserve(padding_values.size());
    std::transform(padding_values.begin(), padding_values.end(), std::back_inserter(padding_values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), padding_values_handles.data(), padding_values.size(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), drop_remainder.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "Toutput_types", reinterpret_cast<const enum TF_DataType *>(Toutput_types.data()), Toutput_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "N", padded_shapes.size());
    TFE_OpSetAttrBool(op.get(), "parallel_copy", (unsigned char)parallel_copy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor padding_f_i_f_o_queue(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PaddingFIFOQueue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor padding_f_i_f_o_queue_v2(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PaddingFIFOQueueV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parallel_concat(const std::vector<tensor>&values, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParallelConcat", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> values_handles; values_handles.reserve(values.size());
    std::transform(values.begin(), values.end(), std::back_inserter(values_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), values_handles.data(), values.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", values.size());
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parallel_dynamic_stitch(const std::vector<tensor>&indices, const std::vector<tensor>&data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParallelDynamicStitch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> indices_handles; indices_handles.reserve(indices.size());
    std::transform(indices.begin(), indices.end(), std::back_inserter(indices_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), indices_handles.data(), indices.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> data_handles; data_handles.reserve(data.size());
    std::transform(data.begin(), data.end(), std::back_inserter(data_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), data_handles.data(), data.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", indices.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parameterized_truncated_normal(const tensor& shape, const tensor& means, const tensor& stdevs, const tensor& minvals, const tensor& maxvals, datatype dtype, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParameterizedTruncatedNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), means.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stdevs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), minvals.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maxvals.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parse_example_dataset(const tensor& input_dataset, const tensor& num_parallel_calls, const std::vector<tensor>&dense_defaults, const std::vector< std::string>& sparse_keys, const std::vector< std::string>& dense_keys, const std::vector<datatype>& sparse_types, const std::vector<datatype>& Tdense, const std::vector< std::vector<int64_t>>& dense_shapes, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, const std::vector< std::string>& ragged_keys, const std::vector<datatype>& ragged_value_types, const std::vector<datatype>& ragged_split_types, bool sloppy=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParseExampleDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_parallel_calls.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> dense_defaults_handles; dense_defaults_handles.reserve(dense_defaults.size());
    std::transform(dense_defaults.begin(), dense_defaults.end(), std::back_inserter(dense_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), dense_defaults_handles.data(), dense_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> sparse_keys_sizes; sparse_keys_sizes.reserve(sparse_keys.size());
    std::transform(sparse_keys.begin(), sparse_keys.end(), std::back_inserter(sparse_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "sparse_keys", reinterpret_cast<const void *const *>(sparse_keys.data()), sparse_keys_sizes.data(), sparse_keys.size());
    
    
    std::vector<std::size_t> dense_keys_sizes; dense_keys_sizes.reserve(dense_keys.size());
    std::transform(dense_keys.begin(), dense_keys.end(), std::back_inserter(dense_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "dense_keys", reinterpret_cast<const void *const *>(dense_keys.data()), dense_keys_sizes.data(), dense_keys.size());
    
    TFE_OpSetAttrTypeList(op.get(), "sparse_types", reinterpret_cast<const enum TF_DataType *>(sparse_types.data()), sparse_types.size());
    TFE_OpSetAttrTypeList(op.get(), "Tdense", reinterpret_cast<const enum TF_DataType *>(Tdense.data()), Tdense.size());
    
    std::vector<const int64_t*> dense_shapes_values; dense_shapes_values.reserve(dense_shapes.size());
    std::vector<int> dense_shapes_ndims; dense_shapes_ndims.reserve(dense_shapes.size());
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_values), [](const auto& v) { return v.data();});
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "dense_shapes", dense_shapes_values.data(), dense_shapes_ndims.data(), dense_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<std::size_t> ragged_keys_sizes; ragged_keys_sizes.reserve(ragged_keys.size());
    std::transform(ragged_keys.begin(), ragged_keys.end(), std::back_inserter(ragged_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "ragged_keys", reinterpret_cast<const void *const *>(ragged_keys.data()), ragged_keys_sizes.data(), ragged_keys.size());
    
    TFE_OpSetAttrTypeList(op.get(), "ragged_value_types", reinterpret_cast<const enum TF_DataType *>(ragged_value_types.data()), ragged_value_types.size());
    TFE_OpSetAttrTypeList(op.get(), "ragged_split_types", reinterpret_cast<const enum TF_DataType *>(ragged_split_types.data()), ragged_split_types.size());
    TFE_OpSetAttrBool(op.get(), "sloppy", (unsigned char)sloppy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parse_example_dataset_v2(const tensor& input_dataset, const tensor& num_parallel_calls, const std::vector<tensor>&dense_defaults, const std::vector< std::string>& sparse_keys, const std::vector< std::string>& dense_keys, const std::vector<datatype>& sparse_types, const std::vector<datatype>& Tdense, const std::vector< std::vector<int64_t>>& dense_shapes, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, const std::vector< std::string>& ragged_keys, const std::vector<datatype>& ragged_value_types, const std::vector<datatype>& ragged_split_types, const std::string& deterministic="default") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParseExampleDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_parallel_calls.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> dense_defaults_handles; dense_defaults_handles.reserve(dense_defaults.size());
    std::transform(dense_defaults.begin(), dense_defaults.end(), std::back_inserter(dense_defaults_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), dense_defaults_handles.data(), dense_defaults.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> sparse_keys_sizes; sparse_keys_sizes.reserve(sparse_keys.size());
    std::transform(sparse_keys.begin(), sparse_keys.end(), std::back_inserter(sparse_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "sparse_keys", reinterpret_cast<const void *const *>(sparse_keys.data()), sparse_keys_sizes.data(), sparse_keys.size());
    
    
    std::vector<std::size_t> dense_keys_sizes; dense_keys_sizes.reserve(dense_keys.size());
    std::transform(dense_keys.begin(), dense_keys.end(), std::back_inserter(dense_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "dense_keys", reinterpret_cast<const void *const *>(dense_keys.data()), dense_keys_sizes.data(), dense_keys.size());
    
    TFE_OpSetAttrTypeList(op.get(), "sparse_types", reinterpret_cast<const enum TF_DataType *>(sparse_types.data()), sparse_types.size());
    TFE_OpSetAttrTypeList(op.get(), "Tdense", reinterpret_cast<const enum TF_DataType *>(Tdense.data()), Tdense.size());
    
    std::vector<const int64_t*> dense_shapes_values; dense_shapes_values.reserve(dense_shapes.size());
    std::vector<int> dense_shapes_ndims; dense_shapes_ndims.reserve(dense_shapes.size());
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_values), [](const auto& v) { return v.data();});
    std::transform(dense_shapes.begin(), dense_shapes.end(), std::back_inserter(dense_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "dense_shapes", dense_shapes_values.data(), dense_shapes_ndims.data(), dense_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<std::size_t> ragged_keys_sizes; ragged_keys_sizes.reserve(ragged_keys.size());
    std::transform(ragged_keys.begin(), ragged_keys.end(), std::back_inserter(ragged_keys_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "ragged_keys", reinterpret_cast<const void *const *>(ragged_keys.data()), ragged_keys_sizes.data(), ragged_keys.size());
    
    TFE_OpSetAttrTypeList(op.get(), "ragged_value_types", reinterpret_cast<const enum TF_DataType *>(ragged_value_types.data()), ragged_value_types.size());
    TFE_OpSetAttrTypeList(op.get(), "ragged_split_types", reinterpret_cast<const enum TF_DataType *>(ragged_split_types.data()), ragged_split_types.size());
    TFE_OpSetAttrString(op.get(), "deterministic", (void*) deterministic.c_str(), deterministic.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor parse_tensor(const tensor& serialized, datatype out_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ParseTensor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), serialized.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor placeholder(datatype dtype, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Placeholder", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor placeholder_v2(datatype dtype, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PlaceholderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor placeholder_with_default(const tensor& input, datatype dtype, const std::vector<int64_t>& shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PlaceholderWithDefault", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor polygamma(const tensor& a, const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Polygamma", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor population_count(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PopulationCount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor pow(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Pow", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor prefetch_dataset(const tensor& input_dataset, const tensor& buffer_size, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, int64_t slack_period=0, bool legacy_autotune=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PrefetchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "slack_period", slack_period);
    TFE_OpSetAttrBool(op.get(), "legacy_autotune", (unsigned char)legacy_autotune);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor prelinearize(const tensor& input, datatype dtype, const std::vector<int64_t>& shape, const std::vector<int64_t>& layout) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Prelinearize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrIntList(op.get(), "layout", layout.data(), layout.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor prelinearize_tuple(const std::vector<tensor>&inputs, const std::vector<datatype>& dtypes, const std::vector< std::vector<int64_t>>& shapes, const std::vector<int64_t>& layouts) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PrelinearizeTuple", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrIntList(op.get(), "layouts", layouts.data(), layouts.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor prevent_gradient(const tensor& input, const std::string& message="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PreventGradient", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "message", (void*) message.c_str(), message.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor print(const tensor& input, const std::vector<tensor>&data, const std::vector<datatype>& U, const std::string& message="", int64_t first_n=-1, int64_t summarize=3) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Print", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> data_handles; data_handles.reserve(data.size());
    std::transform(data.begin(), data.end(), std::back_inserter(data_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), data_handles.data(), data.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "U", reinterpret_cast<const enum TF_DataType *>(U.data()), U.size());
    TFE_OpSetAttrString(op.get(), "message", (void*) message.c_str(), message.size());
    TFE_OpSetAttrInt(op.get(), "first_n", first_n);
    TFE_OpSetAttrInt(op.get(), "summarize", summarize);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor priority_queue(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PriorityQueue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor priority_queue_v2(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PriorityQueueV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor private_thread_pool_dataset(const tensor& input_dataset, const tensor& num_threads, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PrivateThreadPoolDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_threads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor prod(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Prod", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor py_func(const std::vector<tensor>&input, const std::string& token, const std::vector<datatype>& Tin, const std::vector<datatype>& Tout) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PyFunc", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "token", (void*) token.c_str(), token.size());
    TFE_OpSetAttrTypeList(op.get(), "Tin", reinterpret_cast<const enum TF_DataType *>(Tin.data()), Tin.size());
    TFE_OpSetAttrTypeList(op.get(), "Tout", reinterpret_cast<const enum TF_DataType *>(Tout.data()), Tout.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor py_func_stateless(const std::vector<tensor>&input, const std::string& token, const std::vector<datatype>& Tin, const std::vector<datatype>& Tout) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "PyFuncStateless", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "token", (void*) token.c_str(), token.size());
    TFE_OpSetAttrTypeList(op.get(), "Tin", reinterpret_cast<const enum TF_DataType *>(Tin.data()), Tin.size());
    TFE_OpSetAttrTypeList(op.get(), "Tout", reinterpret_cast<const enum TF_DataType *>(Tout.data()), Tout.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor quantize_and_dequantize(const tensor& input, bool signed_input=true, int64_t num_bits=8, bool range_given=false, float input_min=0.0000e+00, float input_max=0.0000e+00) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QuantizeAndDequantize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "signed_input", (unsigned char)signed_input);
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "range_given", (unsigned char)range_given);
    TFE_OpSetAttrFloat(op.get(), "input_min", input_min);
    TFE_OpSetAttrFloat(op.get(), "input_max", input_max);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor quantize_and_dequantize_v2(const tensor& input, const tensor& input_min, const tensor& input_max, bool signed_input=true, int64_t num_bits=8, bool range_given=false, const std::string& round_mode="HALF_TO_EVEN", bool narrow_range=false, int64_t axis=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QuantizeAndDequantizeV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_min.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_max.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "signed_input", (unsigned char)signed_input);
    TFE_OpSetAttrInt(op.get(), "num_bits", num_bits);
    TFE_OpSetAttrBool(op.get(), "range_given", (unsigned char)range_given);
    TFE_OpSetAttrString(op.get(), "round_mode", (void*) round_mode.c_str(), round_mode.size());
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);
    TFE_OpSetAttrInt(op.get(), "axis", axis);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor quantize_and_dequantize_v3(const tensor& input, const tensor& input_min, const tensor& input_max, const tensor& num_bits, bool signed_input=true, bool range_given=true, bool narrow_range=false, int64_t axis=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QuantizeAndDequantizeV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_min.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_max.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_bits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "signed_input", (unsigned char)signed_input);
    TFE_OpSetAttrBool(op.get(), "range_given", (unsigned char)range_given);
    TFE_OpSetAttrBool(op.get(), "narrow_range", (unsigned char)narrow_range);
    TFE_OpSetAttrInt(op.get(), "axis", axis);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor quantized_mat_mul_with_bias_and_dequantize(const tensor& a, const tensor& b, const tensor& bias, const tensor& min_a, const tensor& max_a, const tensor& min_b, const tensor& max_b, const tensor& min_freezed_output, const tensor& max_freezed_output, datatype T1, datatype T2, datatype Tbias, datatype Toutput, bool transpose_a=false, bool transpose_b=false, const std::string& input_quant_mode="MIN_FIRST") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QuantizedMatMulWithBiasAndDequantize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), bias.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min_a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min_b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), min_freezed_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), max_freezed_output.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "T1", T1);
    TFE_OpSetAttrType(op.get(), "T2", T2);
    TFE_OpSetAttrType(op.get(), "Tbias", Tbias);
    TFE_OpSetAttrType(op.get(), "Toutput", Toutput);
    TFE_OpSetAttrBool(op.get(), "transpose_a", (unsigned char)transpose_a);
    TFE_OpSetAttrBool(op.get(), "transpose_b", (unsigned char)transpose_b);
    TFE_OpSetAttrString(op.get(), "input_quant_mode", (void*) input_quant_mode.c_str(), input_quant_mode.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue(const tensor& handle, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue_many(const tensor& handle, const tensor& n, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeueMany", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), n.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue_many_v2(const tensor& handle, const tensor& n, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeueManyV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), n.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue_up_to(const tensor& handle, const tensor& n, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeueUpTo", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), n.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue_up_to_v2(const tensor& handle, const tensor& n, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeueUpToV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), n.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_dequeue_v2(const tensor& handle, const std::vector<datatype>& component_types, int64_t timeout_ms=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueDequeueV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    TFE_OpSetAttrInt(op.get(), "timeout_ms", timeout_ms);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_is_closed(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueIsClosed", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_is_closed_v2(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueIsClosedV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_size(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor queue_size_v2(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "QueueSizeV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor r_f_f_t(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RFFT", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor r_f_f_t2_d(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RFFT2D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor r_f_f_t3_d(const tensor& input, const tensor& fft_length, datatype Treal=static_cast<datatype>(1), datatype Tcomplex=static_cast<datatype>(8)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RFFT3D", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), fft_length.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Treal", Treal);
    TFE_OpSetAttrType(op.get(), "Tcomplex", Tcomplex);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor r_g_b_to_h_s_v(const tensor& images) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RGBToHSV", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ragged_bincount(const tensor& splits, const tensor& values, const tensor& size, const tensor& weights, datatype Tidx, bool binary_output=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RaggedBincount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), splits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), weights.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrBool(op.get(), "binary_output", (unsigned char)binary_output);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ragged_tensor_to_tensor(const tensor& shape, const tensor& values, const tensor& default_value, const std::vector<tensor>&row_partition_tensors, datatype Tindex, datatype Tshape, const std::vector< std::string>& row_partition_types) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RaggedTensorToTensor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), default_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> row_partition_tensors_handles; row_partition_tensors_handles.reserve(row_partition_tensors.size());
    std::transform(row_partition_tensors.begin(), row_partition_tensors.end(), std::back_inserter(row_partition_tensors_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), row_partition_tensors_handles.data(), row_partition_tensors.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindex", Tindex);
    TFE_OpSetAttrType(op.get(), "Tshape", Tshape);
    TFE_OpSetAttrInt(op.get(), "num_row_partition_tensors", row_partition_tensors.size());
    
    std::vector<std::size_t> row_partition_types_sizes; row_partition_types_sizes.reserve(row_partition_types.size());
    std::transform(row_partition_types.begin(), row_partition_types.end(), std::back_inserter(row_partition_types_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "row_partition_types", reinterpret_cast<const void *const *>(row_partition_types.data()), row_partition_types_sizes.data(), row_partition_types.size());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ragged_tensor_to_variant(const std::vector<tensor>&rt_nested_splits, const tensor& rt_dense_values, datatype Tvalues, bool batched_input, datatype Tsplits=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RaggedTensorToVariant", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> rt_nested_splits_handles; rt_nested_splits_handles.reserve(rt_nested_splits.size());
    std::transform(rt_nested_splits.begin(), rt_nested_splits.end(), std::back_inserter(rt_nested_splits_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), rt_nested_splits_handles.data(), rt_nested_splits.size(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rt_dense_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "RAGGED_RANK", rt_nested_splits.size());
    TFE_OpSetAttrType(op.get(), "Tvalues", Tvalues);
    TFE_OpSetAttrBool(op.get(), "batched_input", (unsigned char)batched_input);
    TFE_OpSetAttrType(op.get(), "Tsplits", Tsplits);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_crop(const tensor& image, const tensor& size, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomCrop", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_dataset(const tensor& seed, const tensor& seed2, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_gamma(const tensor& shape, const tensor& alpha, datatype S, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomGamma", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_gamma_grad(const tensor& alpha, const tensor& sample) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomGammaGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sample.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_poisson(const tensor& shape, const tensor& rate, datatype S, datatype dtype, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomPoisson", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_poisson_v2(const tensor& shape, const tensor& rate, datatype S, int64_t seed=0, int64_t seed2=0, datatype R=static_cast<datatype>(2), datatype dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomPoissonV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrType(op.get(), "R", R);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_shuffle(const tensor& value, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomShuffle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_shuffle_queue(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, int64_t min_after_dequeue=0, int64_t seed=0, int64_t seed2=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomShuffleQueue", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "min_after_dequeue", min_after_dequeue);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_shuffle_queue_v2(const std::vector<datatype>& component_types, const std::vector< std::vector<int64_t>>& shapes, int64_t capacity=-1, int64_t min_after_dequeue=0, int64_t seed=0, int64_t seed2=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomShuffleQueueV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "component_types", reinterpret_cast<const enum TF_DataType *>(component_types.data()), component_types.size());
    
    std::vector<const int64_t*> shapes_values; shapes_values.reserve(shapes.size());
    std::vector<int> shapes_ndims; shapes_ndims.reserve(shapes.size());
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_values), [](const auto& v) { return v.data();});
    std::transform(shapes.begin(), shapes.end(), std::back_inserter(shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "shapes", shapes_values.data(), shapes_ndims.data(), shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "min_after_dequeue", min_after_dequeue);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_standard_normal(const tensor& shape, datatype dtype, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomStandardNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_uniform(const tensor& shape, datatype dtype, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomUniform", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor random_uniform_int(const tensor& shape, const tensor& minval, const tensor& maxval, datatype Tout, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RandomUniformInt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), minval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maxval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor range(const tensor& start, const tensor& limit, const tensor& delta, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Range", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), start.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), limit.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), delta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor range_dataset(const tensor& start, const tensor& stop, const tensor& step, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RangeDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), start.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stop.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), step.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor rank(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Rank", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor read_file(const tensor& filename) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReadFile", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filename.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor read_variable_op(const tensor& resource, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReadVariableOp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_num_records_produced(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderNumRecordsProduced", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_num_records_produced_v2(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderNumRecordsProducedV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_num_work_units_completed(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderNumWorkUnitsCompleted", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_num_work_units_completed_v2(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderNumWorkUnitsCompletedV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_serialize_state(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderSerializeState", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reader_serialize_state_v2(const tensor& reader_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReaderSerializeStateV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), reader_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor real(const tensor& input, datatype Tout=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Real", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tout", Tout);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor real_div(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RealDiv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor rebatch_dataset(const tensor& input_dataset, const tensor& num_replicas, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool use_fallback=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RebatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_replicas.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "use_fallback", (unsigned char)use_fallback);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reciprocal(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Reciprocal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reciprocal_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReciprocalGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor record_input(const std::string& file_pattern, int64_t file_random_seed=301, float file_shuffle_shift_ratio=0.0000e+00, int64_t file_buffer_size=10000, int64_t file_parallelism=16, int64_t batch_size=32, const std::string& compression_type="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RecordInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "file_pattern", (void*) file_pattern.c_str(), file_pattern.size());
    TFE_OpSetAttrInt(op.get(), "file_random_seed", file_random_seed);
    TFE_OpSetAttrFloat(op.get(), "file_shuffle_shift_ratio", file_shuffle_shift_ratio);
    TFE_OpSetAttrInt(op.get(), "file_buffer_size", file_buffer_size);
    TFE_OpSetAttrInt(op.get(), "file_parallelism", file_parallelism);
    TFE_OpSetAttrInt(op.get(), "batch_size", batch_size);
    TFE_OpSetAttrString(op.get(), "compression_type", (void*) compression_type.c_str(), compression_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor recv(datatype tensor_type, const std::string& tensor_name, const std::string& send_device, int64_t send_device_incarnation, const std::string& recv_device, bool client_terminated=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Recv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "tensor_type", tensor_type);
    TFE_OpSetAttrString(op.get(), "tensor_name", (void*) tensor_name.c_str(), tensor_name.size());
    TFE_OpSetAttrString(op.get(), "send_device", (void*) send_device.c_str(), send_device.size());
    TFE_OpSetAttrInt(op.get(), "send_device_incarnation", send_device_incarnation);
    TFE_OpSetAttrString(op.get(), "recv_device", (void*) recv_device.c_str(), recv_device.size());
    TFE_OpSetAttrBool(op.get(), "client_terminated", (unsigned char)client_terminated);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor recv_t_p_u_embedding_activations(int64_t num_outputs, const std::string& config) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RecvTPUEmbeddingActivations", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_outputs", num_outputs);
    TFE_OpSetAttrString(op.get(), "config", (void*) config.c_str(), config.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reduce_join(const tensor& inputs, const tensor& reduction_indices, bool keep_dims=false, const std::string& separator="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReduceJoin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrString(op.get(), "separator", (void*) separator.c_str(), separator.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ref_enter(const tensor& data, const std::string& frame_name, bool is_constant=false, int64_t parallel_iterations=10) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RefEnter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "frame_name", (void*) frame_name.c_str(), frame_name.size());
    TFE_OpSetAttrBool(op.get(), "is_constant", (unsigned char)is_constant);
    TFE_OpSetAttrInt(op.get(), "parallel_iterations", parallel_iterations);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ref_exit(const tensor& data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RefExit", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ref_identity(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RefIdentity", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ref_next_iteration(const tensor& data) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RefNextIteration", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor ref_select(const tensor& index, const std::vector<tensor>&inputs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RefSelect", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor regex_full_match(const tensor& input, const tensor& pattern) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RegexFullMatch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), pattern.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor regex_replace(const tensor& input, const tensor& pattern, const tensor& rewrite, bool replace_global=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RegexReplace", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), pattern.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rewrite.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "replace_global", (unsigned char)replace_global);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor register_dataset(const tensor& dataset, const tensor& address, const tensor& protocol, int64_t external_state_policy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RegisterDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), address.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), protocol.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "external_state_policy", external_state_policy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor relu(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Relu", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor relu6(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Relu6", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor relu6_grad(const tensor& gradients, const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Relu6Grad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor relu_grad(const tensor& gradients, const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReluGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor repeat_dataset(const tensor& input_dataset, const tensor& count, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RepeatDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), count.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reshape(const tensor& input_tensor, const tensor& shape, datatype Tshape=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Reshape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tshape", Tshape);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_area(const tensor& images, const tensor& size, bool align_corners=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeArea", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_bicubic(const tensor& images, const tensor& size, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeBicubic", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_bicubic_grad(const tensor& grads, const tensor& original_image, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeBicubicGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), original_image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_bilinear(const tensor& images, const tensor& size, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeBilinear", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_bilinear_grad(const tensor& grads, const tensor& original_image, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeBilinearGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), original_image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_nearest_neighbor(const tensor& images, const tensor& size, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeNearestNeighbor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resize_nearest_neighbor_grad(const tensor& grads, const tensor& size, bool align_corners=false, bool half_pixel_centers=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResizeNearestNeighborGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "align_corners", (unsigned char)align_corners);
    TFE_OpSetAttrBool(op.get(), "half_pixel_centers", (unsigned char)half_pixel_centers);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_accumulator_num_accumulated(const tensor& handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceAccumulatorNumAccumulated", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_accumulator_take_gradient(const tensor& handle, const tensor& num_required, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceAccumulatorTakeGradient", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_required.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_conditional_accumulator(datatype dtype, const std::vector<int64_t>& shape, const std::string& container="", const std::string& shared_name="", const std::string& reduction_type="MEAN") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceConditionalAccumulator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "reduction_type", (void*) reduction_type.c_str(), reduction_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_count_up_to(const tensor& resource, int64_t limit) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceCountUpTo", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "limit", limit);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_gather(const tensor& resource, const tensor& indices, datatype dtype, datatype Tindices, int64_t batch_dims=0, bool validate_indices=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceGather", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrInt(op.get(), "batch_dims", batch_dims);
    TFE_OpSetAttrBool(op.get(), "validate_indices", (unsigned char)validate_indices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor resource_gather_nd(const tensor& resource, const tensor& indices, datatype dtype, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ResourceGatherNd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor restore(const tensor& file_pattern, const tensor& input_tensor_name, datatype dt, int64_t preferred_shard=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Restore", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), file_pattern.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dt", dt);
    TFE_OpSetAttrInt(op.get(), "preferred_shard", preferred_shard);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor restore_slice(const tensor& file_pattern, const tensor& input_tensor_name, const tensor& shape_and_slice, datatype dt, int64_t preferred_shard=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RestoreSlice", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), file_pattern.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape_and_slice.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dt", dt);
    TFE_OpSetAttrInt(op.get(), "preferred_shard", preferred_shard);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor restore_v2(const tensor& prefix, const tensor& input_tensor_names, const tensor& shape_and_slices, const std::vector<datatype>& dtypes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RestoreV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), prefix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor_names.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape_and_slices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor retrieve_t_p_u_embedding_stochastic_gradient_descent_parameters(int64_t num_shards, int64_t shard_id, int64_t table_id=-1, const std::string& table_name="", const std::string& config="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RetrieveTPUEmbeddingStochasticGradientDescentParameters", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_shards", num_shards);
    TFE_OpSetAttrInt(op.get(), "shard_id", shard_id);
    TFE_OpSetAttrInt(op.get(), "table_id", table_id);
    TFE_OpSetAttrString(op.get(), "table_name", (void*) table_name.c_str(), table_name.size());
    TFE_OpSetAttrString(op.get(), "config", (void*) config.c_str(), config.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reverse(const tensor& input_tensor, const tensor& dims) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Reverse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dims.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reverse_sequence(const tensor& input, const tensor& seq_lengths, int64_t seq_dim, int64_t batch_dim=0, datatype Tlen=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReverseSequence", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seq_lengths.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "seq_dim", seq_dim);
    TFE_OpSetAttrInt(op.get(), "batch_dim", batch_dim);
    TFE_OpSetAttrType(op.get(), "Tlen", Tlen);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor reverse_v2(const tensor& input_tensor, const tensor& axis, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ReverseV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor right_shift(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RightShift", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor rint(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Rint", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor roll(const tensor& input, const tensor& shift, const tensor& axis, datatype Tshift, datatype Taxis) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Roll", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shift.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), axis.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tshift", Tshift);
    TFE_OpSetAttrType(op.get(), "Taxis", Taxis);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor round(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Round", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor rsqrt(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Rsqrt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor rsqrt_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "RsqrtGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sampling_dataset(const tensor& input_dataset, const tensor& rate, const tensor& seed, const tensor& seed2, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SamplingDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rate.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scalar_summary(const tensor& tags, const tensor& values) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScalarSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tags.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scale_and_translate(const tensor& images, const tensor& size, const tensor& scale, const tensor& translation, const std::string& kernel_type="lanczos3", bool antialias=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScaleAndTranslate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), images.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scale.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), translation.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "kernel_type", (void*) kernel_type.c_str(), kernel_type.size());
    TFE_OpSetAttrBool(op.get(), "antialias", (unsigned char)antialias);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scale_and_translate_grad(const tensor& grads, const tensor& original_image, const tensor& scale, const tensor& translation, const std::string& kernel_type="lanczos3", bool antialias=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScaleAndTranslateGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grads.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), original_image.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), scale.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), translation.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "kernel_type", (void*) kernel_type.c_str(), kernel_type.size());
    TFE_OpSetAttrBool(op.get(), "antialias", (unsigned char)antialias);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_add(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_div(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterDiv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_max(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_min(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_mul(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd(const tensor& indices, const tensor& updates, const tensor& shape, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_add(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_max(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_min(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_non_aliasing_add(const tensor& input, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdNonAliasingAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_sub(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdSub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_nd_update(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterNdUpdate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_sub(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterSub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor scatter_update(const tensor& ref, const tensor& indices, const tensor& updates, datatype Tindices, bool use_locking=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ScatterUpdate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sdca_fprint(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SdcaFprint", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor segment_max(const tensor& data, const tensor& segment_ids, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SegmentMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor segment_mean(const tensor& data, const tensor& segment_ids, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SegmentMean", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor segment_min(const tensor& data, const tensor& segment_ids, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SegmentMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor segment_prod(const tensor& data, const tensor& segment_ids, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SegmentProd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor segment_sum(const tensor& data, const tensor& segment_ids, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SegmentSum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor select(const tensor& condition, const tensor& t, const tensor& e) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Select", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), condition.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), t.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), e.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor select_v2(const tensor& condition, const tensor& t, const tensor& e) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SelectV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), condition.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), t.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), e.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor self_adjoint_eig(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SelfAdjointEig", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor selu(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Selu", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor selu_grad(const tensor& gradients, const tensor& outputs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SeluGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), outputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor serialize_iterator(const tensor& resource_handle, int64_t external_state_policy=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SerializeIterator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "external_state_policy", external_state_policy);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor serialize_many_sparse(const tensor& sparse_indices, const tensor& sparse_values, const tensor& sparse_shape, datatype out_type=static_cast<datatype>(7)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SerializeManySparse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor serialize_sparse(const tensor& sparse_indices, const tensor& sparse_values, const tensor& sparse_shape, datatype out_type=static_cast<datatype>(7)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SerializeSparse", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor serialize_tensor(const tensor& input_tensor) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SerializeTensor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor set_size(const tensor& set_indices, const tensor& set_values, const tensor& set_shape, bool validate_indices=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SetSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), set_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), set_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), set_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "validate_indices", (unsigned char)validate_indices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor set_stats_aggregator_dataset(const tensor& input_dataset, const tensor& stats_aggregator, const tensor& tag, const tensor& counter_prefix, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SetStatsAggregatorDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stats_aggregator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), counter_prefix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shape(const tensor& input, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Shape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shape_n(const std::vector<tensor>&input, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShapeN", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_handles; input_handles.reserve(input.size());
    std::transform(input.begin(), input.end(), std::back_inserter(input_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_handles.data(), input.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", input.size());
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shard_dataset(const tensor& input_dataset, const tensor& num_shards, const tensor& index, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool require_non_empty=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShardDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_shards.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "require_non_empty", (unsigned char)require_non_empty);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sharded_filename(const tensor& basename, const tensor& shard, const tensor& num_shards) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShardedFilename", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), basename.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shard.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_shards.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sharded_filespec(const tensor& basename, const tensor& num_shards) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShardedFilespec", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), basename.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_shards.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shuffle_and_repeat_dataset(const tensor& input_dataset, const tensor& buffer_size, const tensor& seed, const tensor& seed2, const tensor& count, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool reshuffle_each_iteration=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShuffleAndRepeatDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), count.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "reshuffle_each_iteration", (unsigned char)reshuffle_each_iteration);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shuffle_and_repeat_dataset_v2(const tensor& input_dataset, const tensor& buffer_size, const tensor& seed, const tensor& seed2, const tensor& count, const tensor& seed_generator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool reshuffle_each_iteration=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShuffleAndRepeatDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), count.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed_generator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "reshuffle_each_iteration", (unsigned char)reshuffle_each_iteration);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shuffle_dataset(const tensor& input_dataset, const tensor& buffer_size, const tensor& seed, const tensor& seed2, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool reshuffle_each_iteration=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShuffleDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "reshuffle_each_iteration", (unsigned char)reshuffle_each_iteration);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shuffle_dataset_v2(const tensor& input_dataset, const tensor& buffer_size, const tensor& seed_generator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShuffleDatasetV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed_generator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor shuffle_dataset_v3(const tensor& input_dataset, const tensor& buffer_size, const tensor& seed, const tensor& seed2, const tensor& seed_generator, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, bool reshuffle_each_iteration=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ShuffleDatasetV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed_generator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "reshuffle_each_iteration", (unsigned char)reshuffle_each_iteration);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sigmoid(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sigmoid", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sigmoid_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SigmoidGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sign(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sin(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sinh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sinh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor size(const tensor& input, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Size", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor skip_dataset(const tensor& input_dataset, const tensor& count, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SkipDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), count.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sleep_dataset(const tensor& input_dataset, const tensor& sleep_microseconds, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SleepDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sleep_microseconds.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor slice(const tensor& input, const tensor& begin, const tensor& size, datatype Index) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Slice", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), begin.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Index", Index);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sliding_window_dataset(const tensor& input_dataset, const tensor& window_size, const tensor& window_shift, const tensor& window_stride, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SlidingWindowDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_shift.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), window_stride.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor snapshot(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Snapshot", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor snapshot_dataset(const tensor& input_dataset, const tensor& path, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes, const std::string& compression="", const std::string& reader_path_prefix="", const std::string& writer_path_prefix="", int64_t shard_size_bytes=10737418240, int64_t pending_snapshot_expiry_seconds=86400, int64_t num_reader_threads=1, int64_t reader_buffer_size=1, int64_t num_writer_threads=1, int64_t writer_buffer_size=1, bool shuffle_on_read=false, int64_t seed=0, int64_t seed2=0, const std::string& mode="auto", const std::string& snapshot_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SnapshotDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), path.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "compression", (void*) compression.c_str(), compression.size());
    TFE_OpSetAttrString(op.get(), "reader_path_prefix", (void*) reader_path_prefix.c_str(), reader_path_prefix.size());
    TFE_OpSetAttrString(op.get(), "writer_path_prefix", (void*) writer_path_prefix.c_str(), writer_path_prefix.size());
    TFE_OpSetAttrInt(op.get(), "shard_size_bytes", shard_size_bytes);
    TFE_OpSetAttrInt(op.get(), "pending_snapshot_expiry_seconds", pending_snapshot_expiry_seconds);
    TFE_OpSetAttrInt(op.get(), "num_reader_threads", num_reader_threads);
    TFE_OpSetAttrInt(op.get(), "reader_buffer_size", reader_buffer_size);
    TFE_OpSetAttrInt(op.get(), "num_writer_threads", num_writer_threads);
    TFE_OpSetAttrInt(op.get(), "writer_buffer_size", writer_buffer_size);
    TFE_OpSetAttrBool(op.get(), "shuffle_on_read", (unsigned char)shuffle_on_read);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);
    TFE_OpSetAttrString(op.get(), "mode", (void*) mode.c_str(), mode.size());
    TFE_OpSetAttrString(op.get(), "snapshot_name", (void*) snapshot_name.c_str(), snapshot_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sobol_sample(const tensor& dim, const tensor& num_results, const tensor& skip, datatype dtype=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SobolSample", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_results.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), skip.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor softmax(const tensor& logits) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Softmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), logits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor softplus(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Softplus", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor softplus_grad(const tensor& gradients, const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SoftplusGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor softsign(const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Softsign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor softsign_grad(const tensor& gradients, const tensor& features) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SoftsignGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), gradients.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), features.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor space_to_batch(const tensor& input, const tensor& paddings, int64_t block_size, datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SpaceToBatch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "block_size", block_size);
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor space_to_batch_n_d(const tensor& input, const tensor& block_shape, const tensor& paddings, datatype Tblock_shape=static_cast<datatype>(3), datatype Tpaddings=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SpaceToBatchND", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), block_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), paddings.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tblock_shape", Tblock_shape);
    TFE_OpSetAttrType(op.get(), "Tpaddings", Tpaddings);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor space_to_depth(const tensor& input, int64_t block_size, const std::string& data_format="NHWC") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SpaceToDepth", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "block_size", block_size);
    TFE_OpSetAttrString(op.get(), "data_format", (void*) data_format.c_str(), data_format.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_adadelta(const tensor& var, const tensor& accum, const tensor& accum_update, const tensor& lr, const tensor& rho, const tensor& epsilon, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyAdadelta", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum_update.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_adagrad(const tensor& var, const tensor& accum, const tensor& lr, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false, bool update_slots=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyAdagrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "update_slots", (unsigned char)update_slots);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_adagrad_d_a(const tensor& var, const tensor& gradient_accumulator, const tensor& gradient_squared_accumulator, const tensor& grad, const tensor& indices, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& global_step, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyAdagradDA", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradient_accumulator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), gradient_squared_accumulator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), global_step.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_adagrad_v2(const tensor& var, const tensor& accum, const tensor& lr, const tensor& epsilon, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false, bool update_slots=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyAdagradV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "update_slots", (unsigned char)update_slots);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_centered_r_m_s_prop(const tensor& var, const tensor& mg, const tensor& ms, const tensor& mom, const tensor& lr, const tensor& rho, const tensor& momentum, const tensor& epsilon, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyCenteredRMSProp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mg.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ms.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mom.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_ftrl(const tensor& var, const tensor& accum, const tensor& linear, const tensor& grad, const tensor& indices, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& lr_power, datatype Tindices, bool use_locking=false, bool multiply_linear_by_lr=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyFtrl", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), linear.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "multiply_linear_by_lr", (unsigned char)multiply_linear_by_lr);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_ftrl_v2(const tensor& var, const tensor& accum, const tensor& linear, const tensor& grad, const tensor& indices, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& l2_shrinkage, const tensor& lr_power, datatype Tindices, bool use_locking=false, bool multiply_linear_by_lr=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyFtrlV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), linear.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2_shrinkage.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr_power.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "multiply_linear_by_lr", (unsigned char)multiply_linear_by_lr);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_momentum(const tensor& var, const tensor& accum, const tensor& lr, const tensor& grad, const tensor& indices, const tensor& momentum, datatype Tindices, bool use_locking=false, bool use_nesterov=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyMomentum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);
    TFE_OpSetAttrBool(op.get(), "use_nesterov", (unsigned char)use_nesterov);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_proximal_adagrad(const tensor& var, const tensor& accum, const tensor& lr, const tensor& l1, const tensor& l2, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyProximalAdagrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), accum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_proximal_gradient_descent(const tensor& var, const tensor& alpha, const tensor& l1, const tensor& l2, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyProximalGradientDescent", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l1.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), l2.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_apply_r_m_s_prop(const tensor& var, const tensor& ms, const tensor& mom, const tensor& lr, const tensor& rho, const tensor& momentum, const tensor& epsilon, const tensor& grad, const tensor& indices, datatype Tindices, bool use_locking=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseApplyRMSProp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), var.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), ms.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), mom.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lr.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rho.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), momentum.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), epsilon.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "use_locking", (unsigned char)use_locking);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_bincount(const tensor& indices, const tensor& values, const tensor& dense_shape, const tensor& size, const tensor& weights, datatype Tidx, bool binary_output=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseBincount", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), weights.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrBool(op.get(), "binary_output", (unsigned char)binary_output);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_conditional_accumulator(datatype dtype, const std::vector<int64_t>& shape, const std::string& container="", const std::string& shared_name="", const std::string& reduction_type="MEAN") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseConditionalAccumulator", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "reduction_type", (void*) reduction_type.c_str(), reduction_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_dense_cwise_add(const tensor& sp_indices, const tensor& sp_values, const tensor& sp_shape, const tensor& dense) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseDenseCwiseAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sp_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_dense_cwise_div(const tensor& sp_indices, const tensor& sp_values, const tensor& sp_shape, const tensor& dense) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseDenseCwiseDiv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sp_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_dense_cwise_mul(const tensor& sp_indices, const tensor& sp_values, const tensor& sp_shape, const tensor& dense) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseDenseCwiseMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sp_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_mat_mul(const tensor& a, const tensor& b, bool transpose_a=false, bool transpose_b=false, bool a_is_sparse=false, bool b_is_sparse=false, datatype Ta=static_cast<datatype>(1), datatype Tb=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "transpose_a", (unsigned char)transpose_a);
    TFE_OpSetAttrBool(op.get(), "transpose_b", (unsigned char)transpose_b);
    TFE_OpSetAttrBool(op.get(), "a_is_sparse", (unsigned char)a_is_sparse);
    TFE_OpSetAttrBool(op.get(), "b_is_sparse", (unsigned char)b_is_sparse);
    TFE_OpSetAttrType(op.get(), "Ta", Ta);
    TFE_OpSetAttrType(op.get(), "Tb", Tb);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_add(const tensor& a, const tensor& b, const tensor& alpha, const tensor& beta) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), beta.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_mat_mul(const tensor& a, const tensor& b, bool transpose_a=false, bool transpose_b=false, bool adjoint_a=false, bool adjoint_b=false, bool transpose_output=false, bool conjugate_output=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "transpose_a", (unsigned char)transpose_a);
    TFE_OpSetAttrBool(op.get(), "transpose_b", (unsigned char)transpose_b);
    TFE_OpSetAttrBool(op.get(), "adjoint_a", (unsigned char)adjoint_a);
    TFE_OpSetAttrBool(op.get(), "adjoint_b", (unsigned char)adjoint_b);
    TFE_OpSetAttrBool(op.get(), "transpose_output", (unsigned char)transpose_output);
    TFE_OpSetAttrBool(op.get(), "conjugate_output", (unsigned char)conjugate_output);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_mul(const tensor& a, const tensor& b) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_n_n_z(const tensor& sparse_matrix) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixNNZ", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_matrix.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_ordering_a_m_d(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixOrderingAMD", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_softmax(const tensor& logits, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixSoftmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), logits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_softmax_grad(const tensor& softmax, const tensor& grad_softmax, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixSoftmaxGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), softmax.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad_softmax.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_sparse_cholesky(const tensor& input, const tensor& permutation, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixSparseCholesky", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), permutation.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_sparse_mat_mul(const tensor& a, const tensor& b, datatype type, bool transpose_a=false, bool transpose_b=false, bool adjoint_a=false, bool adjoint_b=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixSparseMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);
    TFE_OpSetAttrBool(op.get(), "transpose_a", (unsigned char)transpose_a);
    TFE_OpSetAttrBool(op.get(), "transpose_b", (unsigned char)transpose_b);
    TFE_OpSetAttrBool(op.get(), "adjoint_a", (unsigned char)adjoint_a);
    TFE_OpSetAttrBool(op.get(), "adjoint_b", (unsigned char)adjoint_b);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_transpose(const tensor& input, datatype type, bool conjugate=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixTranspose", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);
    TFE_OpSetAttrBool(op.get(), "conjugate", (unsigned char)conjugate);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_matrix_zeros(const tensor& dense_shape, datatype type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseMatrixZeros", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), dense_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "type", type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_reduce_max(const tensor& input_indices, const tensor& input_values, const tensor& input_shape, const tensor& reduction_axes, bool keep_dims=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseReduceMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_axes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_reduce_sum(const tensor& input_indices, const tensor& input_values, const tensor& input_shape, const tensor& reduction_axes, bool keep_dims=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseReduceSum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_axes.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_mean(const tensor& data, const tensor& indices, const tensor& segment_ids, datatype Tidx=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentMean", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_mean_grad(const tensor& grad, const tensor& indices, const tensor& segment_ids, const tensor& output_dim0, datatype Tidx=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentMeanGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_dim0.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_mean_with_num_segments(const tensor& data, const tensor& indices, const tensor& segment_ids, const tensor& num_segments, datatype Tidx=static_cast<datatype>(3), datatype Tnumsegments=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentMeanWithNumSegments", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_sqrt_n(const tensor& data, const tensor& indices, const tensor& segment_ids, datatype Tidx=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentSqrtN", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_sqrt_n_grad(const tensor& grad, const tensor& indices, const tensor& segment_ids, const tensor& output_dim0, datatype Tidx=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentSqrtNGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_dim0.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_sqrt_n_with_num_segments(const tensor& data, const tensor& indices, const tensor& segment_ids, const tensor& num_segments, datatype Tidx=static_cast<datatype>(3), datatype Tnumsegments=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentSqrtNWithNumSegments", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_sum(const tensor& data, const tensor& indices, const tensor& segment_ids, datatype Tidx=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentSum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_segment_sum_with_num_segments(const tensor& data, const tensor& indices, const tensor& segment_ids, const tensor& num_segments, datatype Tidx=static_cast<datatype>(3), datatype Tnumsegments=static_cast<datatype>(3), datatype Tsegmentids=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSegmentSumWithNumSegments", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);
    TFE_OpSetAttrType(op.get(), "Tsegmentids", Tsegmentids);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_slice_grad(const tensor& backprop_val_grad, const tensor& input_indices, const tensor& input_start, const tensor& output_indices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSliceGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), backprop_val_grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_start.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_softmax(const tensor& sp_indices, const tensor& sp_values, const tensor& sp_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseSoftmax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sp_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sp_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_tensor_dense_add(const tensor& a_indices, const tensor& a_values, const tensor& a_shape, const tensor& b, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseTensorDenseAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), a_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), a_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_tensor_dense_mat_mul(const tensor& a_indices, const tensor& a_values, const tensor& a_shape, const tensor& b, datatype Tindices=static_cast<datatype>(9), bool adjoint_a=false, bool adjoint_b=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseTensorDenseMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), a_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), a_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), a_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "adjoint_a", (unsigned char)adjoint_a);
    TFE_OpSetAttrBool(op.get(), "adjoint_b", (unsigned char)adjoint_b);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_tensor_slice_dataset(const tensor& indices, const tensor& values, const tensor& dense_shape, datatype Tvalues) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseTensorSliceDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tvalues", Tvalues);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_tensor_to_c_s_r_sparse_matrix(const tensor& indices, const tensor& values, const tensor& dense_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseTensorToCSRSparseMatrix", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dense_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sparse_to_dense(const tensor& sparse_indices, const tensor& output_shape, const tensor& sparse_values, const tensor& default_value, datatype Tindices, bool validate_indices=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SparseToDense", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sparse_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), output_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sparse_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), default_value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrBool(op.get(), "validate_indices", (unsigned char)validate_indices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor spence(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Spence", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor split(const tensor& split_dim, const tensor& value, int64_t num_split) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Split", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), split_dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_split", num_split);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor split_v(const tensor& value, const tensor& size_splits, const tensor& split_dim, int64_t num_split, datatype Tlen=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SplitV", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size_splits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), split_dim.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_split", num_split);
    TFE_OpSetAttrType(op.get(), "Tlen", Tlen);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sql_dataset(const tensor& driver_name, const tensor& data_source_name, const tensor& query, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SqlDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), driver_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), data_source_name.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), query.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sqrt(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sqrt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sqrt_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SqrtGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor square(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Square", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor squared_difference(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SquaredDifference", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor squeeze(const tensor& input, const std::vector<int64_t>& squeeze_dims) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Squeeze", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrIntList(op.get(), "squeeze_dims", squeeze_dims.data(), squeeze_dims.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack(datatype elem_type, const std::string& stack_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Stack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "elem_type", elem_type);
    TFE_OpSetAttrString(op.get(), "stack_name", (void*) stack_name.c_str(), stack_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack_pop(const tensor& handle, datatype elem_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StackPop", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "elem_type", elem_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack_pop_v2(const tensor& handle, datatype elem_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StackPopV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "elem_type", elem_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack_push(const tensor& handle, const tensor& elem, bool swap_memory=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StackPush", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), elem.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "swap_memory", (unsigned char)swap_memory);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack_push_v2(const tensor& handle, const tensor& elem, bool swap_memory=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StackPushV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), elem.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "swap_memory", (unsigned char)swap_memory);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stack_v2(const tensor& max_size, datatype elem_type, const std::string& stack_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StackV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), max_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "elem_type", elem_type);
    TFE_OpSetAttrString(op.get(), "stack_name", (void*) stack_name.c_str(), stack_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stage_peek(const tensor& index, const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StagePeek", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stage_size(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StageSize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_random_binomial(const tensor& resource, const tensor& algorithm, const tensor& shape, const tensor& counts, const tensor& probs, datatype S, datatype dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulRandomBinomial", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), counts.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), probs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_standard_normal(const tensor& resource, const tensor& shape, datatype dtype=static_cast<datatype>(1), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulStandardNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_standard_normal_v2(const tensor& resource, const tensor& algorithm, const tensor& shape, datatype dtype=static_cast<datatype>(1), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulStandardNormalV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_truncated_normal(const tensor& resource, const tensor& algorithm, const tensor& shape, datatype dtype=static_cast<datatype>(1), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulTruncatedNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_uniform(const tensor& resource, const tensor& algorithm, const tensor& shape, datatype dtype=static_cast<datatype>(1), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulUniform", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_uniform_full_int(const tensor& resource, const tensor& algorithm, const tensor& shape, datatype dtype=static_cast<datatype>(23), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulUniformFullInt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateful_uniform_int(const tensor& resource, const tensor& algorithm, const tensor& shape, const tensor& minval, const tensor& maxval, datatype dtype=static_cast<datatype>(9), datatype shape_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatefulUniformInt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), algorithm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), minval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maxval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "shape_dtype", shape_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_multinomial(const tensor& logits, const tensor& num_samples, const tensor& seed, datatype Tseed=static_cast<datatype>(9), datatype output_dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessMultinomial", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), logits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_samples.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);
    TFE_OpSetAttrType(op.get(), "output_dtype", output_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_parameterized_truncated_normal(const tensor& shape, const tensor& seed, const tensor& means, const tensor& stddevs, const tensor& minvals, const tensor& maxvals, datatype S, datatype dtype, datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessParameterizedTruncatedNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), means.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stddevs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), minvals.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maxvals.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_binomial(const tensor& shape, const tensor& seed, const tensor& counts, const tensor& probs, datatype S, datatype Tseed=static_cast<datatype>(9), datatype dtype=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomBinomial", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), counts.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), probs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "S", S);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_gamma_v2(const tensor& shape, const tensor& seed, const tensor& alpha, datatype dtype, datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomGammaV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), alpha.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_normal(const tensor& shape, const tensor& seed, datatype dtype=static_cast<datatype>(1), datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_poisson(const tensor& shape, const tensor& seed, const tensor& lam, datatype Rtype, datatype dtype, datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomPoisson", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lam.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Rtype", Rtype);
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_uniform(const tensor& shape, const tensor& seed, datatype dtype=static_cast<datatype>(1), datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomUniform", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_uniform_full_int(const tensor& shape, const tensor& seed, datatype dtype=static_cast<datatype>(23), datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomUniformFullInt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_random_uniform_int(const tensor& shape, const tensor& seed, const tensor& minval, const tensor& maxval, datatype dtype, datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessRandomUniformInt", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), minval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maxval.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stateless_truncated_normal(const tensor& shape, const tensor& seed, datatype dtype=static_cast<datatype>(1), datatype Tseed=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatelessTruncatedNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), seed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrType(op.get(), "Tseed", Tseed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor static_regex_full_match(const tensor& input, const std::string& pattern) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StaticRegexFullMatch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "pattern", (void*) pattern.c_str(), pattern.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor static_regex_replace(const tensor& input, const std::string& pattern, const std::string& rewrite, bool replace_global=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StaticRegexReplace", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "pattern", (void*) pattern.c_str(), pattern.size());
    TFE_OpSetAttrString(op.get(), "rewrite", (void*) rewrite.c_str(), rewrite.size());
    TFE_OpSetAttrBool(op.get(), "replace_global", (unsigned char)replace_global);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stats_aggregator_handle(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatsAggregatorHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stats_aggregator_handle_v2(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatsAggregatorHandleV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stats_aggregator_summary(const tensor& iterator) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StatsAggregatorSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), iterator.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor stop_gradient(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StopGradient", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor strided_slice(const tensor& input, const tensor& begin, const tensor& end, const tensor& strides, datatype Index, int64_t begin_mask=0, int64_t end_mask=0, int64_t ellipsis_mask=0, int64_t new_axis_mask=0, int64_t shrink_axis_mask=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StridedSlice", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), begin.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), end.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Index", Index);
    TFE_OpSetAttrInt(op.get(), "begin_mask", begin_mask);
    TFE_OpSetAttrInt(op.get(), "end_mask", end_mask);
    TFE_OpSetAttrInt(op.get(), "ellipsis_mask", ellipsis_mask);
    TFE_OpSetAttrInt(op.get(), "new_axis_mask", new_axis_mask);
    TFE_OpSetAttrInt(op.get(), "shrink_axis_mask", shrink_axis_mask);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor strided_slice_assign(const tensor& ref, const tensor& begin, const tensor& end, const tensor& strides, const tensor& value, datatype Index, int64_t begin_mask=0, int64_t end_mask=0, int64_t ellipsis_mask=0, int64_t new_axis_mask=0, int64_t shrink_axis_mask=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StridedSliceAssign", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), ref.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), begin.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), end.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Index", Index);
    TFE_OpSetAttrInt(op.get(), "begin_mask", begin_mask);
    TFE_OpSetAttrInt(op.get(), "end_mask", end_mask);
    TFE_OpSetAttrInt(op.get(), "ellipsis_mask", ellipsis_mask);
    TFE_OpSetAttrInt(op.get(), "new_axis_mask", new_axis_mask);
    TFE_OpSetAttrInt(op.get(), "shrink_axis_mask", shrink_axis_mask);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor strided_slice_grad(const tensor& shape, const tensor& begin, const tensor& end, const tensor& strides, const tensor& dy, datatype Index, int64_t begin_mask=0, int64_t end_mask=0, int64_t ellipsis_mask=0, int64_t new_axis_mask=0, int64_t shrink_axis_mask=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StridedSliceGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), begin.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), end.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Index", Index);
    TFE_OpSetAttrInt(op.get(), "begin_mask", begin_mask);
    TFE_OpSetAttrInt(op.get(), "end_mask", end_mask);
    TFE_OpSetAttrInt(op.get(), "ellipsis_mask", ellipsis_mask);
    TFE_OpSetAttrInt(op.get(), "new_axis_mask", new_axis_mask);
    TFE_OpSetAttrInt(op.get(), "shrink_axis_mask", shrink_axis_mask);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_format(const std::vector<tensor>&inputs, const std::string& template_arg="%s", const std::string& placeholder="%s", int64_t summarize=3) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringFormat", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "template", (void*) template_arg.c_str(), template_arg.size());
    TFE_OpSetAttrString(op.get(), "placeholder", (void*) placeholder.c_str(), placeholder.size());
    TFE_OpSetAttrInt(op.get(), "summarize", summarize);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_join(const std::vector<tensor>&inputs, const std::string& separator="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringJoin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());
    TFE_OpSetAttrString(op.get(), "separator", (void*) separator.c_str(), separator.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_length(const tensor& input, const std::string& unit="BYTE") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringLength", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "unit", (void*) unit.c_str(), unit.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_lower(const tensor& input, const std::string& encoding="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringLower", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "encoding", (void*) encoding.c_str(), encoding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_strip(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringStrip", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_to_hash_bucket(const tensor& string_input_tensor, int64_t num_buckets) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringToHashBucket", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), string_input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_buckets", num_buckets);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_to_hash_bucket_fast(const tensor& input, int64_t num_buckets) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringToHashBucketFast", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_buckets", num_buckets);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_to_hash_bucket_strong(const tensor& input, int64_t num_buckets, const std::vector<int64_t>& key) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringToHashBucketStrong", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_buckets", num_buckets);
    TFE_OpSetAttrIntList(op.get(), "key", key.data(), key.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_to_number(const tensor& string_input_tensor, datatype out_type=static_cast<datatype>(1)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringToNumber", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), string_input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor string_upper(const tensor& input, const std::string& encoding="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "StringUpper", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "encoding", (void*) encoding.c_str(), encoding.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sub(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor substr(const tensor& input, const tensor& pos, const tensor& len, const std::string& unit="BYTE") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Substr", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), pos.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), len.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "unit", (void*) unit.c_str(), unit.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor sum(const tensor& input, const tensor& reduction_indices, bool keep_dims=false, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Sum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), reduction_indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "keep_dims", (unsigned char)keep_dims);
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor summary_writer(const std::string& shared_name="", const std::string& container="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "SummaryWriter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_f_record_dataset(const tensor& filenames, const tensor& compression_type, const tensor& buffer_size) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TFRecordDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), compression_type.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_f_record_reader(const std::string& container="", const std::string& shared_name="", const std::string& compression_type="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TFRecordReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "compression_type", (void*) compression_type.c_str(), compression_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_f_record_reader_v2(const std::string& container="", const std::string& shared_name="", const std::string& compression_type="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TFRecordReaderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());
    TFE_OpSetAttrString(op.get(), "compression_type", (void*) compression_type.c_str(), compression_type.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_p_u_compilation_result() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TPUCompilationResult", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_p_u_embedding_activations(const tensor& embedding_variable, const tensor& sliced_activations, int64_t table_id, int64_t lookup_id) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TPUEmbeddingActivations", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), embedding_variable.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), sliced_activations.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "table_id", table_id);
    TFE_OpSetAttrInt(op.get(), "lookup_id", lookup_id);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_p_u_ordinal_selector() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TPUOrdinalSelector", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_p_u_replicated_input(const std::vector<tensor>&inputs, bool is_mirrored_variable=false, int64_t index=-1, bool is_packed=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TPUReplicatedInput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> inputs_handles; inputs_handles.reserve(inputs.size());
    std::transform(inputs.begin(), inputs.end(), std::back_inserter(inputs_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), inputs_handles.data(), inputs.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "N", inputs.size());
    TFE_OpSetAttrBool(op.get(), "is_mirrored_variable", (unsigned char)is_mirrored_variable);
    TFE_OpSetAttrInt(op.get(), "index", index);
    TFE_OpSetAttrBool(op.get(), "is_packed", (unsigned char)is_packed);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor t_p_u_replicated_output(const tensor& input, int64_t num_replicas) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TPUReplicatedOutput", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_replicas", num_replicas);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor take_dataset(const tensor& input_dataset, const tensor& count, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TakeDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), count.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tan(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Tan", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tanh(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Tanh", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tanh_grad(const tensor& y, const tensor& dy) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TanhGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dy.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor temporary_variable(const std::vector<int64_t>& shape, datatype dtype, const std::string& var_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TemporaryVariable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrString(op.get(), "var_name", (void*) var_name.c_str(), var_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array(const tensor& size, datatype dtype, const std::vector<int64_t>& element_shape, bool dynamic_size=false, bool clear_after_read=true, const std::string& tensor_array_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArray", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "dynamic_size", (unsigned char)dynamic_size);
    TFE_OpSetAttrBool(op.get(), "clear_after_read", (unsigned char)clear_after_read);
    TFE_OpSetAttrString(op.get(), "tensor_array_name", (void*) tensor_array_name.c_str(), tensor_array_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_gather(const tensor& handle, const tensor& indices, const tensor& flow_in, datatype dtype, const std::vector<int64_t>& element_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayGather", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_gather_v2(const tensor& handle, const tensor& indices, const tensor& flow_in, datatype dtype, const std::vector<int64_t>& element_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayGatherV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_gather_v3(const tensor& handle, const tensor& indices, const tensor& flow_in, datatype dtype, const std::vector<int64_t>& element_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayGatherV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_grad(const tensor& handle, const tensor& flow_in, const std::string& source) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "source", (void*) source.c_str(), source.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_grad_v2(const tensor& handle, const tensor& flow_in, const std::string& source) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayGradV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "source", (void*) source.c_str(), source.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_pack(const tensor& handle, const tensor& flow_in, datatype dtype, const std::vector<int64_t>& element_shape) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayPack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_read(const tensor& handle, const tensor& index, const tensor& flow_in, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayRead", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_read_v2(const tensor& handle, const tensor& index, const tensor& flow_in, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayReadV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_read_v3(const tensor& handle, const tensor& index, const tensor& flow_in, datatype dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayReadV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_scatter(const tensor& handle, const tensor& indices, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayScatter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_scatter_v2(const tensor& handle, const tensor& indices, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayScatterV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_scatter_v3(const tensor& handle, const tensor& indices, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayScatterV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_size(const tensor& handle, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_size_v2(const tensor& handle, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySizeV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_size_v3(const tensor& handle, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySizeV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_split(const tensor& handle, const tensor& value, const tensor& lengths, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySplit", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lengths.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_split_v2(const tensor& handle, const tensor& value, const tensor& lengths, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySplitV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lengths.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_split_v3(const tensor& handle, const tensor& value, const tensor& lengths, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArraySplitV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lengths.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_unpack(const tensor& handle, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayUnpack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_v2(const tensor& size, datatype dtype, const std::vector<int64_t>& element_shape, bool dynamic_size=false, bool clear_after_read=true, const std::string& tensor_array_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "element_shape", element_shape.data(), element_shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrBool(op.get(), "dynamic_size", (unsigned char)dynamic_size);
    TFE_OpSetAttrBool(op.get(), "clear_after_read", (unsigned char)clear_after_read);
    TFE_OpSetAttrString(op.get(), "tensor_array_name", (void*) tensor_array_name.c_str(), tensor_array_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_write(const tensor& handle, const tensor& index, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayWrite", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_write_v2(const tensor& handle, const tensor& index, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayWriteV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_array_write_v3(const tensor& handle, const tensor& index, const tensor& value, const tensor& flow_in) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorArrayWriteV3", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), flow_in.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_dataset(const std::vector<tensor>&components, const std::vector<datatype>& Toutput_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> components_handles; components_handles.reserve(components.size());
    std::transform(components.begin(), components.end(), std::back_inserter(components_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), components_handles.data(), components.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "Toutput_types", reinterpret_cast<const enum TF_DataType *>(Toutput_types.data()), Toutput_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_concat_lists(const tensor& input_a, const tensor& input_b, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListConcatLists", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_a.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_b.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_element_shape(const tensor& input_handle, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListElementShape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_from_tensor(const tensor& input_tensor, const tensor& element_shape, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListFromTensor", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_gather(const tensor& input_handle, const tensor& indices, const tensor& element_shape, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListGather", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_get_item(const tensor& input_handle, const tensor& index, const tensor& element_shape, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListGetItem", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_length(const tensor& input_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListLength", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_push_back(const tensor& input_handle, const tensor& input_tensor, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListPushBack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_push_back_batch(const tensor& input_handles, const tensor& input_tensor, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListPushBackBatch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handles.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_reserve(const tensor& element_shape, const tensor& num_elements, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListReserve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_elements.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_resize(const tensor& input_handle, const tensor& size) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListResize", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_scatter(const tensor& input_tensor, const tensor& indices, const tensor& element_shape, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListScatter", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_scatter_into_existing_list(const tensor& input_handle, const tensor& input_tensor, const tensor& indices, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListScatterIntoExistingList", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_scatter_v2(const tensor& input_tensor, const tensor& indices, const tensor& element_shape, const tensor& num_elements, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListScatterV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_elements.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_set_item(const tensor& input_handle, const tensor& index, const tensor& item, datatype element_dtype) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListSetItem", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), item.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_split(const tensor& input_tensor, const tensor& element_shape, const tensor& lengths, datatype element_dtype, datatype shape_type) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListSplit", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), lengths.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrType(op.get(), "shape_type", shape_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_list_stack(const tensor& input_handle, const tensor& element_shape, datatype element_dtype, int64_t num_elements=-1) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorListStack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), element_shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "element_dtype", element_dtype);
    TFE_OpSetAttrInt(op.get(), "num_elements", num_elements);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_scatter_add(const tensor& input_tensor, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorScatterAdd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_scatter_max(const tensor& input_tensor, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorScatterMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_scatter_min(const tensor& input_tensor, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorScatterMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_scatter_sub(const tensor& input_tensor, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorScatterSub", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_scatter_update(const tensor& input_tensor, const tensor& indices, const tensor& updates, datatype Tindices) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorScatterUpdate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), updates.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_slice_dataset(const std::vector<tensor>&components, const std::vector<datatype>& Toutput_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorSliceDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> components_handles; components_handles.reserve(components.size());
    std::transform(components.begin(), components.end(), std::back_inserter(components_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), components_handles.data(), components.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "Toutput_types", reinterpret_cast<const enum TF_DataType *>(Toutput_types.data()), Toutput_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_strided_slice_update(const tensor& input, const tensor& begin, const tensor& end, const tensor& strides, const tensor& value, datatype Index, int64_t begin_mask=0, int64_t end_mask=0, int64_t ellipsis_mask=0, int64_t new_axis_mask=0, int64_t shrink_axis_mask=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorStridedSliceUpdate", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), begin.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), end.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), strides.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Index", Index);
    TFE_OpSetAttrInt(op.get(), "begin_mask", begin_mask);
    TFE_OpSetAttrInt(op.get(), "end_mask", end_mask);
    TFE_OpSetAttrInt(op.get(), "ellipsis_mask", ellipsis_mask);
    TFE_OpSetAttrInt(op.get(), "new_axis_mask", new_axis_mask);
    TFE_OpSetAttrInt(op.get(), "shrink_axis_mask", shrink_axis_mask);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_summary(const tensor& input_tensor, const std::vector< std::string>& labels, const std::string& description="", const std::string& display_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorSummary", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    
    std::vector<std::size_t> labels_sizes; labels_sizes.reserve(labels.size());
    std::transform(labels.begin(), labels.end(), std::back_inserter(labels_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "labels", reinterpret_cast<const void *const *>(labels.data()), labels_sizes.data(), labels.size());
    
    TFE_OpSetAttrString(op.get(), "description", (void*) description.c_str(), description.size());
    TFE_OpSetAttrString(op.get(), "display_name", (void*) display_name.c_str(), display_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tensor_summary_v2(const tensor& tag, const tensor& input_tensor, const tensor& serialized_summary_metadata) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TensorSummaryV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), tag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), serialized_summary_metadata.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor text_line_dataset(const tensor& filenames, const tensor& compression_type, const tensor& buffer_size) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TextLineDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), filenames.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), compression_type.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), buffer_size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor text_line_reader(int64_t skip_header_lines=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TextLineReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "skip_header_lines", skip_header_lines);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor text_line_reader_v2(int64_t skip_header_lines=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TextLineReaderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "skip_header_lines", skip_header_lines);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor thread_pool_dataset(const tensor& input_dataset, const tensor& thread_pool, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ThreadPoolDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), thread_pool.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor thread_pool_handle(int64_t num_threads, const std::string& display_name, int64_t max_intra_op_parallelism=1, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ThreadPoolHandle", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num_threads", num_threads);
    TFE_OpSetAttrString(op.get(), "display_name", (void*) display_name.c_str(), display_name.size());
    TFE_OpSetAttrInt(op.get(), "max_intra_op_parallelism", max_intra_op_parallelism);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tile(const tensor& input, const tensor& multiples, datatype Tmultiples=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Tile", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), multiples.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tmultiples", Tmultiples);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tile_grad(const tensor& input, const tensor& multiples) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TileGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), multiples.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor timestamp() {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Timestamp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor to_bool(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ToBool", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor transpose(const tensor& x, const tensor& perm, datatype Tperm=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Transpose", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), perm.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tperm", Tperm);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tridiagonal_mat_mul(const tensor& superdiag, const tensor& maindiag, const tensor& subdiag, const tensor& rhs) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TridiagonalMatMul", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), superdiag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), maindiag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), subdiag.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor tridiagonal_solve(const tensor& diagonals, const tensor& rhs, bool partial_pivoting=true) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TridiagonalSolve", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), diagonals.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), rhs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrBool(op.get(), "partial_pivoting", (unsigned char)partial_pivoting);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor truncate_div(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TruncateDiv", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor truncate_mod(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TruncateMod", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor truncated_normal(const tensor& shape, datatype dtype, int64_t seed=0, int64_t seed2=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "TruncatedNormal", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), shape.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrInt(op.get(), "seed", seed);
    TFE_OpSetAttrInt(op.get(), "seed2", seed2);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unbatch(const tensor& batched_input_tensor, const tensor& batch_index, const tensor& id, int64_t timeout_micros, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Unbatch", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), batched_input_tensor.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), id.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "timeout_micros", timeout_micros);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unbatch_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnbatchDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unbatch_grad(const tensor& original_input, const tensor& batch_index, const tensor& grad, const tensor& id, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnbatchGrad", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), original_input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), batch_index.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), grad.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), id.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor uncompress_element(const tensor& compressed, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UncompressElement", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), compressed.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unicode_encode(const tensor& input_values, const tensor& input_splits, const std::string& output_encoding, const std::string& errors="replace", int64_t replacement_char=65533, datatype Tsplits=static_cast<datatype>(9)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnicodeEncode", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), input_splits.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "output_encoding", (void*) output_encoding.c_str(), output_encoding.size());
    TFE_OpSetAttrString(op.get(), "errors", (void*) errors.c_str(), errors.size());
    TFE_OpSetAttrInt(op.get(), "replacement_char", replacement_char);
    TFE_OpSetAttrType(op.get(), "Tsplits", Tsplits);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unicode_script(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnicodeScript", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unicode_transcode(const tensor& input, const std::string& input_encoding, const std::string& output_encoding, const std::string& errors="replace", int64_t replacement_char=65533, bool replace_control_characters=false) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnicodeTranscode", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "input_encoding", (void*) input_encoding.c_str(), input_encoding.size());
    TFE_OpSetAttrString(op.get(), "output_encoding", (void*) output_encoding.c_str(), output_encoding.size());
    TFE_OpSetAttrString(op.get(), "errors", (void*) errors.c_str(), errors.size());
    TFE_OpSetAttrInt(op.get(), "replacement_char", replacement_char);
    TFE_OpSetAttrBool(op.get(), "replace_control_characters", (unsigned char)replace_control_characters);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unique_dataset(const tensor& input_dataset, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UniqueDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unpack(const tensor& value, int64_t num, int64_t axis=0) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Unpack", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), value.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrInt(op.get(), "num", num);
    TFE_OpSetAttrInt(op.get(), "axis", axis);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unravel_index(const tensor& indices, const tensor& dims, datatype Tidx=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnravelIndex", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), indices.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), dims.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tidx", Tidx);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unsorted_segment_join(const tensor& inputs, const tensor& segment_ids, const tensor& num_segments, datatype Tindices, const std::string& separator="", datatype Tnumsegments=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnsortedSegmentJoin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrString(op.get(), "separator", (void*) separator.c_str(), separator.size());
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unsorted_segment_max(const tensor& data, const tensor& segment_ids, const tensor& num_segments, datatype Tindices, datatype Tnumsegments=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnsortedSegmentMax", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unsorted_segment_min(const tensor& data, const tensor& segment_ids, const tensor& num_segments, datatype Tindices, datatype Tnumsegments=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnsortedSegmentMin", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unsorted_segment_prod(const tensor& data, const tensor& segment_ids, const tensor& num_segments, datatype Tindices, datatype Tnumsegments=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnsortedSegmentProd", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unsorted_segment_sum(const tensor& data, const tensor& segment_ids, const tensor& num_segments, datatype Tindices, datatype Tnumsegments=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnsortedSegmentSum", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), data.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), segment_ids.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), num_segments.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "Tindices", Tindices);
    TFE_OpSetAttrType(op.get(), "Tnumsegments", Tnumsegments);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unstage(const std::vector<datatype>& dtypes, int64_t capacity=0, int64_t memory_limit=0, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Unstage", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "dtypes", reinterpret_cast<const enum TF_DataType *>(dtypes.data()), dtypes.size());
    TFE_OpSetAttrInt(op.get(), "capacity", capacity);
    TFE_OpSetAttrInt(op.get(), "memory_limit", memory_limit);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor unwrap_dataset_variant(const tensor& input_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UnwrapDatasetVariant", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor upper_bound(const tensor& sorted_inputs, const tensor& values, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "UpperBound", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), sorted_inputs.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), values.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor var_handle_op(datatype dtype, const std::vector<int64_t>& shape, const std::vector< std::string>& allowed_devices, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "VarHandleOp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    
    std::vector<std::size_t> allowed_devices_sizes; allowed_devices_sizes.reserve(allowed_devices.size());
    std::transform(allowed_devices.begin(), allowed_devices.end(), std::back_inserter(allowed_devices_sizes), [](const auto& s) { return s.size();});
    TFE_OpSetAttrStringList(op.get(), "allowed_devices", reinterpret_cast<const void *const *>(allowed_devices.data()), allowed_devices_sizes.data(), allowed_devices.size());
    
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor var_is_initialized_op(const tensor& resource) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "VarIsInitializedOp", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), resource.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor variable(const std::vector<int64_t>& shape, datatype dtype, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Variable", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor variable_shape(const tensor& input, datatype out_type=static_cast<datatype>(3)) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "VariableShape", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrType(op.get(), "out_type", out_type);

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor variable_v2(const std::vector<int64_t>& shape, datatype dtype, const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "VariableV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    
    TFE_OpSetAttrShape(op.get(), "shape", shape.data(), shape.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrType(op.get(), "dtype", dtype);
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor where(const tensor& input) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Where", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor whole_file_reader(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "WholeFileReader", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor whole_file_reader_v2(const std::string& container="", const std::string& shared_name="") {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "WholeFileReaderV2", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    

    // Attributes
    TFE_OpSetAttrString(op.get(), "container", (void*) container.c_str(), container.size());
    TFE_OpSetAttrString(op.get(), "shared_name", (void*) shared_name.c_str(), shared_name.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor window_dataset(const tensor& input_dataset, const tensor& size, const tensor& shift, const tensor& stride, const tensor& drop_remainder, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "WindowDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_dataset.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), size.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), shift.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), stride.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), drop_remainder.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor worker_heartbeat(const tensor& request) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "WorkerHeartbeat", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), request.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor wrap_dataset_variant(const tensor& input_handle) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "WrapDatasetVariant", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), input_handle.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor xdivy(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Xdivy", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor xlog1py(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Xlog1py", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor xlogy(const tensor& x, const tensor& y) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Xlogy", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), y.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor zeros_like(const tensor& x) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ZerosLike", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor zeta(const tensor& x, const tensor& q) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "Zeta", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    TFE_OpAddInput(op.get(), x.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    
    
    TFE_OpAddInput(op.get(), q.tfe_handle.get(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


inline tensor zip_dataset(const std::vector<tensor>&input_datasets, const std::vector<datatype>& output_types, const std::vector< std::vector<int64_t>>& output_shapes) {

    // Define Op
    std::unique_ptr<TFE_Op, decltype(&TFE_DeleteOp)> op(TFE_NewOp(context::get_context(), "ZipDataset", context::get_status()), &TFE_DeleteOp);
    status_check(context::get_status());

    // Required input arguments
    
    std::vector<TFE_TensorHandle*> input_datasets_handles; input_datasets_handles.reserve(input_datasets.size());
    std::transform(input_datasets.begin(), input_datasets.end(), std::back_inserter(input_datasets_handles), [](const auto& t) { return t.tfe_handle.get();});
    TFE_OpAddInputList(op.get(), input_datasets_handles.data(), input_datasets.size(), context::get_status());
    status_check(context::get_status());
    

    // Attributes
    TFE_OpSetAttrTypeList(op.get(), "output_types", reinterpret_cast<const enum TF_DataType *>(output_types.data()), output_types.size());
    
    std::vector<const int64_t*> output_shapes_values; output_shapes_values.reserve(output_shapes.size());
    std::vector<int> output_shapes_ndims; output_shapes_ndims.reserve(output_shapes.size());
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_values), [](const auto& v) { return v.data();});
    std::transform(output_shapes.begin(), output_shapes.end(), std::back_inserter(output_shapes_ndims), [](const auto& v) { return v.size();});
    TFE_OpSetAttrShapeList(op.get(), "output_shapes", output_shapes_values.data(), output_shapes_ndims.data(), output_shapes.size(), context::get_status());
    status_check(context::get_status());
    
    TFE_OpSetAttrInt(op.get(), "N", input_datasets.size());

    // Execute Op
    int num_outputs_op = 1;
    TFE_TensorHandle* res[1] = {nullptr};
    TFE_Execute(op.get(), res, &num_outputs_op, context::get_status());
    status_check(context::get_status());
    return tensor(res[0]);
}


} // cppflow

#endif

